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Vol.6 No.4 (2022): Journal Scientific
Investigar ISSN: 2588–0659
https://doi.org/10.56048/MQR20225.6.4.2022.03-23
Vol.6-N° 4, 2022, pp. 03-23
Journal Scientific
MQRInvestigar 3
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Efectos del funcionamiento familiar en la adolescencia: una revisión
sistemática
Efectos del funcionamiento familiar en la adolescencia: una revisión
sistemática
Autores:
Zambrano Moreira Jeffrey Alberto
UNIVERSIDAD TÉCNICA DE MANABÍ
Ingeniero en informática. Estudiante de la Maestría en Pedagogía mención Bachillerato
técnico
Portoviejo - Ecuador
jeffrey.zambrano@outlook.es
https://orcid.org/0000-0003-3203-1963
Mayo Parra Israel
UNIVERSIDAD LAICA ELOY ALFARO DE MANABI
Docente de la Facultad de Psicología
Manta – Ecuador
Imayo58@hotmail.com
https://orcid.org/0000-0003-0862-6414
Citación/como citar este artículo: Zambrano, J., y Mayo, I. (2022).
Efectos del funcionamiento familiar en la
adolescencia: una revisión sistemática.
MQRInvestigar, 6(4), 03-23.
https://doi.org/10.56048/MQR20225.6.4.2022.03-23
Fechas de recepción: 25-JUL-2022 aceptación: 30-AGO-2022 publicación: 15-DIC-2022
https://orcid.org/0000-0002-8695-5005
http://mqrinvestigar.com/
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Vol.6 No.4 (2022): Journal Scientific
Investigar ISSN: 2588–0659
https://doi.org/10.56048/MQR20225.6.4.2022.03-23
Vol.6-N° 4, 2022, pp. 03-23
Journal Scientific
MQRInvestigar 4
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Resumen
La familia es el escenario más importante para el desarrollo armónico de los adolescentes,
cuestión de gran relevancia en la cambiante sociedad actual. Para que la familia cumpla las
funciones que se le atribuyen histórica y socialmente, requiere un adecuado funcionamiento,
el que se ha asociado con el desarrollo de cualidades y comportamientos específicos en los
adolescentes. El presente estudio tiene por objetivo analizar el estado actual del conocimiento
en torno al funcionamiento familiar y sus efectos en la adolescencia. Para ello se desarrolló
una revisión sistemática de artículos originales en idioma español, en el periodo de 2017-
2022, basada en la metodología PRISMA, publicados en las bases de datos Dialnet, ScieLo,
Scopus, Redalyc, OpenAIRE y OJS/PKP. Para ello se trazó una estrategia de búsqueda con
descriptores y criterios de inclusión y exclusión para cribar la muestra y seleccionar los
estudios más relevantes, a los que se les aplicó la guía STROBE para evaluar el riesgo de
sesgo. Para el análisis de la información obtenida se empleó la metodología mixta. Quedaron
seleccionados 16 estudios que se agruparon por líneas temáticas y se identificaron las
variables asociadas al funcionamiento familiar de mayor significación. Se concluye que el
funcionamiento familiar es un elemento esencial, que tiene un efecto comprobado como
protector y como riesgo para el desarrollo integral de los adolescentes.
Palabras claves: Funcionalidad familiar, adolescencia, revisión sistemática
Vol.6 No.4 (2022): Journal Scientific
Investigar ISSN: 2588–0659
https://doi.org/10.56048/MQR20225.6.4.2022.03-23
Vol.6-N° 4, 2022, pp. 03-23
Journal Scientific
MQRInvestigar 5
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Abstract
The family is the most important stage for the harmonious development of adolescents, an
issue of great relevance in today's changing society. For the family to fulfill the functions
attributed to it historically and socially, it requires proper functioning, which has been
associated with the development of specific qualities and behaviors in adolescents. The
present study aims to analyze the current state of knowledge about family functioning and its
effects on adolescence. To this end, a systematic review of original articles in Spanish was
developed in the period 2017-2022, based on the PRISMA methodology, published in the
Dialnet, ScieLo, Scopus, Redalyc, OpenAIRE and OJS/PKP databases. To do this, we drew
up a search strategy with descriptors and inclusion and exclusion criteria to screen the sample
and select the most relevant studies, to which the STROBE guide was applied to assess the
risk of bias. For the analysis of the information obtained, the mixed methodology was used.
We selected 16 studies that were grouped by thematic lines and identified the variables
associated with family functioning of greater significance. It is concluded that family
functioning is an essential element, which has a proven effect as a protector and as a risk for
the integral development of adolescents.
Keywords: Family functionality, adolescence, systematic review
Vol.6 No.4 (2022): Journal Scientific
Investigar ISSN: 2588–0659
https://doi.org/10.56048/MQR20225.6.4.2022.03-23
Vol.6-N° 4, 2022, pp. 03-23
Journal Scientific
MQRInvestigar 6
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Introducción
La familia es considerada una categoría histórica, por lo que las características y calidad de
las relaciones que ocurren en su interior responden a un contexto histórico y social
determinado y esto condiciona su ajuste al contexto en que se desarrolla. Se asume como el
escenario primordial para el aprendizaje y el establecimiento de vínculos afectivos que
facilitan la unión y estabilidad basada en normas y valores, expresados en su entorno y
extendidos al marco social, por lo que juega un rol trascendente en el desarrollo de sus
miembros (Villarroel, 2015)
La familia es el espacio de primer contacto que el ser humano tiene con el exterior y tiene la
función de criar, cuidar y satisfacer las necesidades básicas de sus integrantes. En su estudio,
se abordan distintos aspectos que dan características particulares a cada grupo familiar, como
la estructura, dinámica, las emociones familiares, pensamientos y creencias, valores, estilos
de crianza, de educación, entre otros. De esta forma, para que la familia cumpla con las
funciones que se le asocian en su momento histórico y en las condiciones del contexto social
y económico en que existe, el modo en que funciona es de vital relevancia. Aspectos como
su estructura, modos de convivir, los vínculos afectivos, la comunicación, cohesión y la
adaptabilidad son atributos que definen la calidad de su funcionamiento y con ello la
contribución al desarrollo humano de sus miembros (Garcés y Palacio, 2010; Vera et al.,
2020).
Desde esta perspectiva, el funcionamiento familiar es la capacidad que tiene la familia de
satisfacer las necesidades de sus miembros y adaptarse a las situaciones de cambio. Se
considera funcional cuando es capaz de propiciar la solución a los problemas, de modo que
estos no lleguen a afectar a la satisfacción de las necesidades de sus miembros. Para ello,
debe mantener su organización, desarrollar procesos familiares y realizar las actividades de
la vida diaria manteniendo un futuro seguro (Santander et al., 2008).
Para autores como Meza (2010) el funcionamiento familiar responde a una dinámica
complicada, donde los integrantes manejan sus modelos de convivencia, si esta dinámica es
adecuada, flexible y funcional, beneficiará la armonía familiar y generará a sus miembros la
posibilidad de desarrollar su estabilidad emocional, identidad, seguridad y bienestar familiar.
En la literatura especializada sobre el tema, se encuentran distintos modelos teóricos que
explican el funcionamiento familiar, entre ellos se destaca el denominado circumplejo FACE
III (Olson et al., 1979), el que postula la cohesión y la adaptabilidad como variables que
intervienen en él y cuya relación define diferentes tipologías, entre las que el llamado
balanceado le otorga a la familia mayor posibilidad de cumplir las metas y objetivos
relacionados con sus funciones (Ferrer-Honores et al., 2013). El instrumento desarrollado a
partir de esta elaboración teórica es la “Escala de Evaluación de Cohesión y Adaptabilidad
Familiar”. El modelo de Smilkstein (1978), incluye cinco dimensiones del funcionamiento
familiar: adaptación, participación, crecimiento, afecto y resolución, esta elaboración da paso
Vol.6 No.4 (2022): Journal Scientific
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al instrumento de medición APGAR familiar, uno de los de mayor uso en la actualidad. Por
otra parte, Louro-Bernal (2005), propone un modelo de salud familiar de seis dimensiones
que incluye el contexto socioeconómico y cultural, composición, vivencia de procesos
críticos normativos, paranormativos y de salud en la familia, el afrontamiento, relaciones
intrafamiliares y el apoyo social que, en sus relaciones sistémicas, define el funcionamiento
del grupo familiar y éstas se miden a través del instrumento FFSIL.
Un
aspecto
de
gran
importancia
en
el
análisis
del
funcionamiento
familiar
es
su
susceptibilidad al cambio ante las circunstancias concretas que atraviesa a lo largo de su
desarrollo, donde las condiciones socioculturales y económicas juegan un papel fundamental
(Barcelata et al., 2013; Gómez y Hernández, 2021
)
, por lo que es un atributo que caracteriza
a la familia (McCubbin y Thompson, 1987), en función de la capacidad que presente para
enfrentar y superar cada una de las etapas del ciclo vital y los eventos críticos que se puedan
presentar (Saavedra et al., 2016).
En este sentido, el análisis contextual del medio y el momento en que se desarrolla la familia
es fundamental en la comprensión de las particularidades de su funcionamiento. La sociedad
actual impone el constante cambio a partir de la propia evolución social, lo que a su vez
enfatiza la necesidad de desarrollar habilidades especializadas para adaptarse a los nuevos
escenarios, lo que tiene un alto costo para la familia (Avilez y Campos-Uscanga, 2018).
En estos momentos, la responsabilidad de la familia para formar valores morales y transmitir
la cultura y tradición de la que es portadora, está cada vez más vinculada al desarrollo
económico, el acceso a los recursos y los beneficios sociales. Para este punto, la desigualdad
provoca el empobrecimiento de los objetivos de la familia y de las expectativas sobre la
realidad de vida, por lo que el desajuste es cada vez más frecuente (Aylwin y Solar, 2002),
cuestiones que tienen un gran impacto en la estabilidad, salud y desarrollo en armonía de las
nuevas generaciones.
La problemática del impacto de las características de la sociedad actual en el cumplimiento
de las funciones de la familia, atraviesa por grandes desafíos en el plano social, cultural y
psicológico. La globalización, el incremento de la pobreza, el insuficiente acceso a la
educación y la salud de calidad limitan que la familia garantice el desarrollo óptimo de sus
miembros y crean un escenario transitorio, inestable y de gran incertidumbre (Bauman,
2004). Unido a esto, se ha consolidado la concepción de la infancia y la adolescencia como
sectores de consumo y se ha enfatizado en la atribución de roles de género y sexismo
(Auquilla, 2021), lo que marca diferencias en la construcción de las subjetividades en estas
edades. Así mismo, se han incrementado las prácticas virtuales que modifican el tipo y
calidad de las relaciones y distorsionan la apreciación de la realidad en la adolescencia. Todo
esto adiciona nuevas responsabilidades a las familias, cada vez de mayor complejidad y
vulnerabilidad para el desarrollo armónico en la etapa de la adolescencia.
Dada las carácterísticas de las sociedades en este momento, su versatilidad y retos a la
familia, así como la diversidad de posturas teóricas sobre el funcionamiento familiar y de los
efectos que trae para el desarrollo en la edad de la adolescencia, se realiza este estudio de
Vol.6 No.4 (2022): Journal Scientific
Investigar ISSN: 2588–0659
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revisión sistemática, con el objetivo de analizar el estado actual del conocimiento en este
objeto de investigación.
Material y métodos
Se realizó una revisión bibliográfica sistemática para analizar el contenido de la literatura
científica publicada sobre el tema en estudio. Con el propósito de realizar una investigación
de calidad, se tuvo en cuenta la metodología Preferred Reporting Items for Systematic
Review and Meta-Analyses (PRISMA), en su revisión del año 2020 (Matthew et al., 2021;
Universidad de Navarra, 2020). A continuación, se describen los procedimientos seguidos
para su realización.
1.
Identificación de la pregunta guía: esta se elaboró a través del formato CPC
(Concepto, Población y Contexto) (Fernández-Sánchez et al., 2020). Se consideró C
(funcionamiento familiar), P (adolescencia) y C (sociedad actual). Quedó establecida
como: ¿Qué efectos tiene el funcionamiento familiar en la adolescencia en los marcos
de la sociedad actual?
2.
Criterios de selección:
Inclusión: artículos de investigación con diseño mixto o correlacional, que contenga
asociación estadística entre las variables de estudio, publicados en los últimos cinco
años (2017-2022), texto completo en español, disponibles en las bases de datos
abiertas siguientes: Dialnet, ScieLo, Redalyc, Scopus, OpenAIRE y OJS/PKP. La
localización de la información fue realizada durante el mes de julio de 2022.
Exclusión: duplicaciones en las bases de datos, presentación solo de resúmenes,
editoriales, cartas al director, tesis de pre o postgrado, textos sin relación con el tema,
diseños de investigación descriptivos y publicación considerada literatura gris.
3.
Búsqueda sistemática de la literatura: primero se definieron como palabras clave
“funcionamiento familiar” y “adolescencia”. Estos descriptores fueron combinados
al momento de la exploración usando el operador booleano (AND) que permitió
ampliar los criterios de búsqueda y un mejor filtrado de la información.
4.
Selección de estudios aplicando los criterios de inclusión/exclusión: se realizó una
búsqueda
inicial
para
identificar
todos
los
estudios
que
respondieron
a
los
descriptores seleccionados en las bases de datos. Se eliminaron las que estaban
duplicadas, en otro idioma que no es español y en literatura gris. A partir de aquí, los
investigadores, de forma independiente, realizaron el cribado mediante la aplicación
de los criterios de exclusión. A los estudios preseleccionados se les revisó el título y
se leyeron los resúmenes para comprobar la idoneidad con el tema abordado y
eliminar los que no eran pertinentes. De esta forma se conformó la muestra para la
Vol.6 No.4 (2022): Journal Scientific
Investigar ISSN: 2588–0659
https://doi.org/10.56048/MQR20225.6.4.2022.03-23
Vol.6-N° 4, 2022, pp. 03-23
Journal Scientific
MQRInvestigar 9
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revisión. El diagrama de flujo de la sistematización de búsqueda en las bases de datos
se elaboró de acuerdo con la metodología PRISMA-2020.
5.
Extracción de los datos de los estudios: Para extraer los datos relevantes a la
revisión, se realizó la lectura íntegra del texto. Este proceso fue realizado por los
autores de la investigación, de forma manual e independiente. No se emplearon
herramientas de automatización.
6.
Variables en estudio: se registraron datos de las siguientes variables: tamaño de la
muestra y el método para su selección, país en que se desarrolla el estudio, año de
publicación,
base
de
dato
en
que
se
localizó,
instrumento
de
medición
del
funcionamiento familiar empleado, el factor o condición que se asoció, tipo de
relación encontrada entre las variables.
7.
Evaluación de los sesgos individuales y calidad del estudio: para la evaluación del
riesgo de sesgo en cada artículo incluido, se aplicó la declaración STROBE, para
estudios observacionales (Elm et al., 2008; Vandenbroucke et al., 2009). Ambos
investigadores evaluaron todos los artículos de forma independiente y luego se
colegió el resultado, alcanzando consenso. Por otra parte, para garantizar la calidad
del estudio de revisión, se siguió la lista de verificación propuesta en la metodología
PRISMA (Matthew et al., 2021)
Análisis y presentación de los datos encontrados: se analizó la información de forma
integrativa con el empleo de la metodología mixta. En un primer momento se analizaron las
frecuencias y porcientos de las variables en estudio y luego se elaboró una síntesis narrativa
de los principales hallazgos que dio paso a la discusión de los aspectos más relevantes.
Vol.6 No.4 (2022): Journal Scientific
Investigar ISSN: 2588–0659
https://doi.org/10.56048/MQR20225.6.4.2022.03-23
Vol.6-N° 4, 2022, pp. 03-23
Journal Scientific
MQRInvestigar 10
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Resultados
Tras la búsqueda, selección y evaluación de los estudios, se incluyeron un total de 16
artículos para su revisión (Figura 1).
Figura 1. Diagrama de flujo de la selección de los artículos según la metodología PRISMA-2020
En la búsqueda inicial realizada en las bases de datos, se encontraron un total de 1178
estudios
que
respondieron
a
los
descriptores
empleados.
Una
vez
eliminadas
las
publicaciones duplicadas, en otro idioma y en literatura gris, se identificaron 116 trabajos
para cribar, a los que se les aplicaron los criterios de exclusión. Quedaron preseleccionados
un total de 36. De ellos, luego del análisis del título y la lectura de los resúmenes, resultaron
pertinentes a la revisión, un total de 16 artículos que conformaron la muestra para el análisis.
Características de la muestra: de los estudios incluidos en la revisión, el 37.5% (6), se
encontraron en la base de datos Scielo y el 18.8% (3), en Dialnet. Scopus, OpenAIRE, y
Redalic portaron dos estudios (12.5%) cada una. Se localizó un artículo en OJS/PKP (6.2%).
En cuanto al origen por países, se encontró que el 31.2% (n=5) de los estudios, procedían de
Colombia e igual porcentaje, de Perú. De México se analizaron 3 artículos (18.8%), de
España se incluyeron dos trabajos (12.5%) y uno de Ecuador (6.2%). Todos los estudios
responden
a
la
metodología
cuantitativa,
con
diseños
descriptivos,
transversales
y
relacionales.
Evaluación de la calidad metodológica. De acuerdo con la guía STROBE aplicada para la
evaluación de los estudios incluidos en la revisión, no se descartó ninguno por limitaciones
en su validez interna, sin embargo, se encontraron dificultades en la exposición de la
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p087dOjQqlUrOoVI72zPVtezC2rzwwAA1Gc0zN+7dy8zM5PpD0Ux7e2ZVC9fP1+1PvkAAKB1
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zc0tKChgwjw96jJ5vokMk/DZ8e1xvAUAqKcQ6QGgtsjfrJ4ZM4+eOzLnlC9fviyQopFeLBbT
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p5hsC/wiKSbYM3mePhJZpBeLxVr+JAAAuoceSIncqCVMFyfm4il7mGWSPBPmmRnkj8na/gQA
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PNPMXuHO88jzAAANACI9ANQR+Ub4TKpne9czMV4sxVbUM6meqa5HqgcAYLGHU/nWT/L182yq
Z6awR135u4Rq9RMAAECNQaQHgLojfxJJzzJpRKcnmjS00/NOmuRptpcP82zze0R6AAAFCn2a
mIukbMN79pope88R+Tb2yPMAAA0JIj0A1Cn5CiIa0enpJpPb6akn239evsm9fKQnSPUAAFLl
hylhuzXJk59N20UGAIBagUgPAFrDnGLSk04izep6enrl6+RRPw8AUBH5i6QKIV9hOgAANFSI
9ACgZexJJ83tbO09kYvxyPMAABVRaE6P1vUAAG8aRHoA0BXyZ6JsvAcAADXhsAkA8AZCpAcA
XYQTUwAAAACASiHSAwAAAAAAANRLiPQAAAAAAAAA9RIiPQAAAAAAAEC9hEgPAAAAAAAAUC/9
P69DvKrRkfIyAAAAAElFTkSuQmCC
información (tabla 1).
Vol.6 No.4 (2022): Journal Scientific
Investigar ISSN: 2588–0659
https://doi.org/10.56048/MQR20225.6.4.2022.03-23
Vol.6-N° 4, 2022, pp. 03-23
Journal Scientific
MQRInvestigar 11
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Tabla 1. Descripción del cumplimiento de los criterios de la guía STORBE según país del
estudio
Colombia
(n=5)
Perú
(n=5)
México
(n=3)
España
(n=2)
Ecuador
(n=1)
Total
(n=16)
Cumplimiento
(%)
Resumen
100%
100%
66.7%
100%
100%
93.7%
Introducción
100%
60%
100%
100%
0%
87.5%
Metodología
0%
0%
0%
0%
0%
0%
Resultados
80%
20%
67.7%
50%
100%
56.2%
Discusión
80%
20%
33.3%
100%
0%
50%
La
aplicación
de
esta
herramienta
de
evaluación
permitió
identificar
que
los
ítems
pertenecientes
al
criterio
Metodología
tuvieron
mayores
dificultades
en
los
artículos
revisados, dentro de ellos, destaca el que describe: “Especifique todas las medidas adoptadas
para afrontar fuentes potenciales de sesgo”, que no fue abordado en ninguno de los estudios
analizados. Así también se encontró que el 12.5% (n=2) tuvo dificultades para cumplir el
ítem que exige “describir cómo se definió el tamaño muestral” e igual porcentaje de artículos
no expone la “descripción del marco, lugares y fechas relevantes, incluidos los periodos de
reclutamiento y recogida de datos”.
En el criterio Resultados, se constató que 8 artículos (50%), no describen las “características
de los participantes”. Por su parte, en el criterio Discusión, se encontró que, en 9 trabajos,
no se cumplió con el ítem referido a la “discusión de las limitaciones del estudio” (56.2%).
Principales datos extraídos de los estudios analizados
La
revisión
de
cada
trabajo
llevó
a
la
identificación
de
las
características
de
las
investigaciones realizadas y sus principales resultados, lo que se resume, organizado por
países, en la tabla 2.
Tabla 2. Síntesis de información extraída de los artículos seleccionados para la revisión
Autores,
año y país
Muestra
Instrumento
de medición
del FF
Factor
asociado
Resultado significativo.
Sentido de la asociación
Esteves et
al., 2020.
Perú
251
estudiantes
(1ero-5to año
de secundaria)
APGAR
familiar
Habilidades
sociales
Asociación positiva entre las
habilidades sociales y el FF.
Estrada y
Gallegos,
2020. Perú
195
estudiantes
(4to y 5to
grado de
secundaria)
Escala de
Evaluación de
Cohesión y
Adaptabilidad
Familiar
(FACES III)
Adicción a las
redes sociales
Relación inversa entre el FF
y la adicción a las redes
sociales.
Chulli et
al., 2017.
Perú
823 (11 a 18
años)
Escala de
Evaluación de
Cohesión y
Bullying
No existe asociación
significativa entre los niveles
de FF (balanceado, medio y
Vol.6 No.4 (2022): Journal Scientific
Investigar ISSN: 2588–0659
https://doi.org/10.56048/MQR20225.6.4.2022.03-23
Vol.6-N° 4, 2022, pp. 03-23
Journal Scientific
MQRInvestigar 12
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UpZ24r3XZM9QAEydezHnpiuf/fTMA3I3SR9YH5iuVHO/fPXyizxZdn/M/vKzdqOaPSTcaaOP
nXB//N1jLQ342bzAL/Xo3nPjVwUEwQAg20zu5cgIcOtqrjd/vQnlz1wWZPj7DBRgF+SGc+iJ
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Eo1oFw4/ueF+eNKyPjxp6Xv2hyfrsYg8+f5J6H/mlklDe4BNBazXv7+WdC5tfTp1Xvl0St2j
jT6DAHZoGXxf+1C/UuUeiJtj7/9kPyiHpcnMuQAAAABJRU5ErkJggg==
Adaptabilidad
Familiar
(FACES III)
extremo) y el nivel de
bullying global sufrido.
Asociación positiva entre la
agresión psicológica y el
nivel de FF (medio y
extremo).
Tafur,
2020. Perú
190 alumnos
de secundaria
(14-17 años)
APGAR
familiar
Ansiedad-
depresión
Asociación positiva entre la
percepción familiar
disfuncional de tipo leve y
moderada, con la
sintomatología ansiosa y
depresiva.
Olivera y
Yupanqui,
2020. Perú
35 repitentes
con riesgo de
deserción
escolar.
Escala de
Evaluación de
Cohesión y
Adaptabilidad
Familiar
(FACES III)
Violencia
escolar
La violencia física directa e
indirecta y la exclusión social
se asocian de forma positiva
con el FF “extremo y
“medio”.
Forero et
al., 2017.
Colombia
289 (13 a 17
años)
APGAR
familiar
Ideación
suicida y
consumo de
alcohol
Asociación positiva entre la
ideación suicida y la ideación
suicida positiva, con la
disfuncionalidad familiar
grave.
No se encontraron
asociaciones con el consumo
de alcohol.
Moratto et
al., 2017.
Colombia
2421 (9-18
años)
APGAR
familiar
Clima e
intimidación
escolar
Asociación positiva entre la
disfunción familiar y un
clima escolar inadecuado.
Serna et
al., 2020.
Colombia
288 (15-19
años)
APGAR
familiar
Depresión
Asociación positiva entre
depresión moderada/grave y
disfunción familiar leve y
grave.
Castaño y
Páez,
2019.
Colombia
318 (Edad
promedio
20,97 años:
final de
adolescencia)
APGAR
familiar
Tendencias
adictivas a
internet
y a sustancias
psicoactivas
No se encontraron
asociaciones significativas
entre las tendencias adictivas
a internet y sustancias
psicoactivas, con el FF.
Núñez et
al., 2020.
Colombia
435 (12-17
años)
APGAR
familiar
Ideación
suicida
Relación inversa entre el FF
y la alerta o riesgo de
ideación suicida.
Cortaza et
al., 2019.
México
252 (11-15
años)
APGAR
familiar
Uso de
internet,
consumo de
alcohol
Relación negativa entre el
uso de Internet y el FF.
El patrón de consumo de
bajo riesgo se relacionó con
el nivel medio de FF, sin
alcanzar significación
estadística.
Vol.6 No.4 (2022): Journal Scientific
Investigar ISSN: 2588–0659
https://doi.org/10.56048/MQR20225.6.4.2022.03-23
Vol.6-N° 4, 2022, pp. 03-23
Journal Scientific
MQRInvestigar 13
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Gómez y
Rojas,
2020.
México
161 (15-19
años)
Escala de
Evaluación de
Cohesión y
Adaptabilidad
Familiar
(FACES III)
Conductas
violentas en el
noviazgo
Correlaciones negativas y
débiles entre las conductas
violentas y el FF (cohesión).
No se encontraron
asociaciones significativas
con la adaptabilidad familiar.
Alonso et
al., 2017.
México
362 (12-15
años)
APGAR
familiar
Consumo de
alcohol
Asociación negativa
entre el FF y el consumo
dependiente de alcohol.
Marco et
al., 2020.
España
37, con rasgos
de
personalidad
límite (14-18
años)
Escala de Clima
Social en la
Familia
Riesgo suicida
Correlación negativa entre la
dimensión “Relaciones” y la
ideación Suicida.
Correlación negativa entre la
subescala “expresividad” de
la dimensión “Relaciones”,
con la ideación Suicida.
Castro et
al., 2019.
España
2 134 (15-18
años)
APGAR
familiar
Clima
motivacional y
ajuste escolar
Asociación positiva del clima
motivacional orientado a la
tarea con el FF.
Romero y
Giniebra,
2022.
Ecuador
35 (no es
especifica
edad en años)
Cuestionario de
Funcionamiento
Familiar (FF-
SIL)
Autoestima
durante la
pandemia por
COVID.
No se encontró correlación
estadísticamente significativa
entre la autoestima y el FF.
Leyenda: FF (Funcionamiento familiar)
De acuerdo con los datos extraídos, el 50% de los artículos analizados fue publicado durante
el año 2020. Del año 2017 se encontraron cuatro artículos, de 2019 tres y sólo uno de 2022.
El instrumento de medición del funcionamiento familiar más empleado fue el APGAR
familiar, en 10 estudios, seguido de la Escala de Evaluación de Cohesión y Adaptabilidad
Familiar (FACES III), en cuatro. La Escala de Clima Social en la Familia sólo fue empleada
en un estudio, al igual que el Cuestionario de Funcionamiento Familiar (FF-SIL).
Sólo tres artículos incluyeron muestras menores de 50 participantes. En este caso, se
realizaron estudios en poblaciones con criterios de selección muy específicos, como la
pertenencia a un club (Romero y Giniebra, 2022), adolescentes con rasgos de personalidad
límite (Marco et al., 2020) y repitentes con riesgo de deserción escolar (Olivera y Yupanqui,
2020).
Estos
trabajos
coincidieron
en
la
selección
de
la
muestra
por
métodos
no
probabilísticos, lo que fue esperado por la naturaleza de las unidades de análisis, sin embargo,
estudios realizados con mayor número de participantes (Tafur, 2020; Gómez y Rojas, 2020;
Chulli et al., 2017), escogieron la muestra de forma intencional, lo que afecta la validez de
sus resultados.
En correspondencia con lo anterior, el 62.5% de los estudios analizados (10), seleccionaron
la muestra de forma probabilística (ver tabla 3). Es importante destacar que, en el análisis del
muestreo, se hizo evidente en algunos estudios la información faltante sobre los criterios
estadísticos seguidos para la selección de los participantes, cuestión que afecta la calidad de
estas investigaciones. El muestreo probabilístico más empleado fue el estratificado, aplicado
en cinco trabajos.
Vol.6 No.4 (2022): Journal Scientific
Investigar ISSN: 2588–0659
https://doi.org/10.56048/MQR20225.6.4.2022.03-23
Vol.6-N° 4, 2022, pp. 03-23
Journal Scientific
MQRInvestigar 14
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Eo1oFw4/ueF+eNKyPjxp6Xv2hyfrsYg8+f5J6H/mlklDe4BNBazXv7+WdC5tfTp1Xvl0St2j
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Tabla 3. Estrategias de muestreo probabilístico empleadas
Autor principal, año y país
Método de muestreo
Nivel de confianza
Esteves et al., 2020. Perú
Estratificado
NI
Estrada y Gallegos, 2020. Perú
Estratificado
NI
Forero et al., 2017. Colombia
Por cuota porcentual
95%
Moratto et al., 2017. Colombia
Polietápico: sistemático, proporcional y
simple
95%
Serna et al., 2020. Colombia
Simple
95%
Castaño y Páez, 2019. Colombia
Estratificado
95%
Núñez et al., 2020. Colombia
Multietápico: por conglomerados y
estratificado
NI
Cortaza et al., 2019. México
Simple
95%
Alonso et al., 2017. México
Estratificado, por cuota porcentual
95%
Castro et al., 2019. España
Por conglomerados
95%
Leyenda: NI (no identificado)
En otro orden, se identificó que el funcionamiento familiar fue estudiado en asociación con
17 variables que, de forma sintética, se clasificaron por líneas temáticas, como se observa en
la figura 2. La vinculación con el comportamiento fue la tendencia donde se estudiaron el
mayor número de variables (6), con predominio del contexto escolar como fuente. También
se abordó la relación con las adicciones, el estado afectivo emocional y las cualidades
personales. Se identificó un solo estudio que estableció la relación del funcionamiento
familiar con variables de la línea temática adicción y del estado afectivo emocional (Forero
et al., 2017).
Figura 2. Variables relacionadas con el funcionamiento familiar según líneas temáticas y
autores principales
El funcionamiento familiar y sus efectos en el comportamiento durante la adolescencia
Resultó relevante la influencia del funcionamiento familiar en el comportamiento, sobre todo
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en el entorno educativo (Figura 2). A tal efecto, Castro el al. (2019) obtuvieron que el clima
Vol.6 No.4 (2022): Journal Scientific
Investigar ISSN: 2588–0659
https://doi.org/10.56048/MQR20225.6.4.2022.03-23
Vol.6-N° 4, 2022, pp. 03-23
Journal Scientific
MQRInvestigar 15
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motivacional de orientación a la tarea en la promoción de la práctica deportiva, facilita
mejores relaciones familiares y, a la vez, mejor ajuste escolar. En este mismo aspecto,
Moratto et al. (2017) encontraron que, cuando se incrementa la disfuncionalidad familiar,
aumenta el clima escolar inadecuado y la probabilidad de sufrir intimidación es cuatro veces
mayor. Sin embargo, Chulli et al. (2017), al estudiar el bullying, hallaron que, de modo
global, no se establecieron asociaciones entre este y los niveles de funcionamiento familiar
(balanceado, medio y extremo), aunque sí encontraron que los niveles medio y extremo (de
mayor disfuncionalidad familiar), se asociaron a la agresión psicológica, en este resultado no
se desestima el sesgo del método de muestreo intensional utilizado, que pudo tener relevancia
en la obtención de estos datos. Independientemente de ello, todos estos estudios dieron
evidencias de la relación directa del funcionamiento familiar con el clima escolar adecuado,
así como del efecto de la disfuncionalidad en las relaciones interpersonales del adolescente.
Al estudiar la influencia del funcionamiento familiar en las relaciones interpersonales en la
adolescencia, Olivera y Yupanqui (2020), reportaron el predominio de niveles altos de
violencia escolar en una muestra de adolescentes peruanos. La de tipo físico, ejercida tanto
de modo directo como indirecto, junto a la exclusión social como forma de violencia escolar,
alcanzaron un nivel alto en la medida que el funcionamiento familiar fue desbalanceado
(extremo y medio). Estos autores encontraron que la disfunción de la familia estaba basada
en las características de la cohesión, la dispersión entre sus miembros constituyó un factor de
incremento de la violencia escolar. Gómez y Rojas (2020) también hallaron una relación
inversa, aunque débil, entre la cohesión como cualidad del funcionamiento familiar y la
conducta violenta con la pareja, lo que da idea de que la unidad y los vínculos afectivos
familiares tienen un aporte singular al desarrollo de este tipo de interacciones en los
adolescentes, por encima de otros componentes de la funcionalidad, como la adaptabilidad
(Olson et al., 1979), para la que estos estudios no logran establecer asociación significativa.
El funcionamiento familiar y sus efectos en las adicciones en la etapa adolescente
En los artículos revisados que abordaron el comportamiento adictivo (Figura 2), se identificó
que la condición más estudiada fue el consumo problemático de alcohol. Forero et al. (2017)
encontraron
el
predominio
del
consumo
moderado
en
su
muestra
de
adolescentes
colombianos, los autores no hallaron relación entre el funcionamiento familiar y el consumo
de alcohol. Tampoco Castaño y Páez (2019) encuentran asociación con el consumo de
sustancias psicoactivas; sin embargo, Alonso et al. (2017), aunque encontraron el predominio
del consumo sensato
en una muestra de
adolescentes mexicanos, sí hallaron que la
disfuncionalidad familiar incrementa el consumo dependiente de alcohol, cuestión que recibe
evidencias en los resultados de Cortaza et al. (2019), al reportar que el patrón de consumo de
alcohol de bajo riesgo está asociado con el nivel medio de funcionamiento familiar, aunque
no se logra mostrar significación estadística en esta relación.
Con respecto al consumo de internet y el uso de redes sociales en las primeras etapas de la
adolescencia, Cortaza et al. (2019) encontraron predominio del uso, por al menos dos horas
diarias, para actividades de ocio, en los adolescentes mexicanos de su muestra. Este estudio,
junto al de Estrada y Gallegos (2020) coinciden al hallar que este consumo se relaciona con
Vol.6 No.4 (2022): Journal Scientific
Investigar ISSN: 2588–0659
https://doi.org/10.56048/MQR20225.6.4.2022.03-23
Vol.6-N° 4, 2022, pp. 03-23
Journal Scientific
MQRInvestigar 16
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la disfuncionalidad familiar: los adolescentes que mantienen un uso problemático y adictivo,
reportan la percepción de un inadecuado funcionamiento familiar.
En esta línea temática, resalta que, tanto la cohesión como la adaptabilidad, en calidad de
componentes del funcionamiento familiar, se asociaron con la alta adicción a las redes
sociales (Estrada y Gallegos, 2020), lo que es una diferencia con respecto al comportamiento
en el ámbito escolar, donde solo se reportó el efecto de la cohesión familiar. En adolescentes
tardíos, sin embargo, Castaño y Páez (2019), que reportaron el 40% de su muestra de
adolescentes colombianos con adicción social a internet, no lograron establecer nexos
significativos de la tendencia adictiva, con el funcionamiento familiar. Al respecto, los
autores atribuyen su resultado a la incidencia de otros factores diferentes de la familia, como
la relación con amigos, la microcultura juvenil, el proceso de separación y consolidación
como individuos independientes de las figuras parentales y otras cualidades y características
de la personalidad como la autoestima y las estrategias de afrontamiento.
El funcionamiento familiar y sus efectos en el estado afectivo emocional de
adolescentes
En esta línea temática se enfatizó en la conducta suicida (Figura 2). Marco et al. (2020),
encontraron una influencia específica de las dimensiones expresividad y social-recreativa
del clima social en la familia, para el desarrollo de la ideación suicida en adolescentes
diagnosticados con rasgos de personalidad límite. Sus resultados dieron evidencias de que el
incremento del riesgo al suicidio estaría relacionado con menores niveles de libre expresión
emocional en la familia; mientras que la participación conjunta en actividades sociales y de
ocio disminuirían dicho riesgo. En este estudio se destaca que la cohesión familiar no mostró
relación significativa con la ideación suicida, lo que difiere de las investigaciones sobre el
comportamiento y las adicciones analizadas en esta revisión, donde este componente del
funcionamiento familiar tiene un rol muy importante. Al respecto se señala que el sesgo del
tamaño de la muestra (37 adolescentes) y el empleo de un instrumento específico, pudo
determinar este resultado.
Relacionado con el comportamiento suicida, los estudios realizados en Colombia sobre el
tema son consistentes en sus hallazgos. Núñez et al. (2020), encontró que, cerca del 48% de
su muestra podrían representar una alerta de ideación suicida, cuestión que se constata en el
estudio de Serna et al. (2020), que, al estudiar la depresión, hallaron que el 47% de
adolescentes ha pensado en morir como la solución a sus problemas y Forero et al. (2020),
reportaron el predominio del bajo nivel de ideación suicida en la muestra examinada. Estos
tres estudios corroboran que la disfuncionalidad familiar severa o grave incrementa la
posibilidad de desarrollar tanto las ideas suicidas (Núñez et al., 2020), como la depresión de
nivel moderado/grave (Serna et al., 2020). Aquí resalta la importancia de la familia para
conducir el desarrollo integral del adolescente y la necesidad de darle protección a esta edad
ante los problemas de internalización que impone el funcionamiento del grupo familiar.
Al profundizar en la depresión en la adolescencia, Serna et al. (2020) también hallaron que
la probabilidad de presentar sintomatología depresiva es mayor cuando el adolescente
percibe el el deterioro de las relaciones familiares y siente que no es comprendido en la
Vol.6 No.4 (2022): Journal Scientific
Investigar ISSN: 2588–0659
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Vol.6-N° 4, 2022, pp. 03-23
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MQRInvestigar 17
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familia. El estudio realizado por Tafur (2020), constata este resultado al encontrar que la
mayoría de su muestra de adolescentes peruanos percibió sus núcleos parentales con
inatención y escaso compromiso en su desarrollo personal y que dicha disfunción familiar
respondía al tipo de familia monoparental, tener entre 5 y 6 hermanos y un rendimiento
académico regular.
Tafur (2020) encontró mayor frecuencia de adolescentes con sintomatología ansiosa, que
depresiva. Según sus resultados, la percepción de familia disfuncional de nivel leve y
moderada está asociada con la presencia de ambos síntomas. Al respecto, su investigación
reveló que la percepción de disfunción familiar leve/moderado fue más frecuente en
adolescentes con sintomatología ansiosa, mientras que la depresiva lo fue en los que
manifestaron una percepción familiar disfuncional de tipo moderado. Aunque este resultado
aporta evidencias interesantes en cuanto a la discriminación de esta sintomatología en
relación con el funcionamiento familiar, la muestra no aleatorizada pudo afectar su validez.
El funcionamiento familiar y sus efectos en las cualidades personales en la
adolescencia
Esteves et al. (2020) estudiaron las habilidades sociales y encontraron que se presentaban en
niveles promedio en la muestra de adolescentes peruanos estudiados. Los autores hallaron
que el funcionamiento familiar fomenta el desarrollo de este tipo de habilidades y que su
afectación tendría efectos negativos en esta etapa de la vida. Todas las dimensiones que
estudiaron mostraron su relación con el funcionamiento familiar: asertividad, comunicación,
autoestima y toma de decisiones, aunque se resaltó que la asertividad es la que mejor
resultados obtiene y la comunicación, la menos desarrollada. Por otra parte, Romero y
Giniebra (2022), al estudiar la autoestima, no corroboran ese resultado, porque no lograron
establecer asociación de la autoestima con el funcionamiento familiar, cuestión que puede
deberse al sesgo identificado relacionado con el tamaño de la muestra que presenta este
estudio.
.
Discusión
La revisión de la literatura sobre el funcionamiento familiar realizada ha corroborado que
este es un elemento esencial para el desarrollo armónico en la etapa adolescente. Analizado
desde las distintas líneas temáticas que fueron estudiadas, el estudio reveló los aspectos que,
en la actualidad, generan un interés creciente para la investigación, lo que es un reflejo de la
magnitud y variedad de problemáticas que impone la sociedad contemporánea a la familia
para el cumplimiento de sus funciones.
En sentido general, todos los estudios revisados mostraron una relación entre el grado de
funcionamiento familiar y las diferentes variables investigadas. En sus expresiones positivas,
las familias funcionales facilitan alcanzar un clima escolar y motivacional adecuado, mejores
Vol.6 No.4 (2022): Journal Scientific
Investigar ISSN: 2588–0659
https://doi.org/10.56048/MQR20225.6.4.2022.03-23
Vol.6-N° 4, 2022, pp. 03-23
Journal Scientific
MQRInvestigar 18
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relaciones entre coetáneos, el desarrollo de cualidades necesarias para la adaptación social
como las habilidades sociales y la autoestima, así como la estabilidad emocional, incluso en
adolescentes con diagnósticos de trastornos de salud mental precedente. Basado en estas
evidencias, se reafirma el papel protector del buen funcionamiento familiar para el desarrollo
armónico en la adolescencia.
En este estudio, la disfuncionalidad familiar, mostró tener un peso importante en el desarrollo
de
comportamientos
inadecuados
en
el
ámbito
escolar,
el
consumo
problemático
de
sustancias y contenidos de internet, así como en el ajuste afectivo emocional de los
adolescentes, con especial evidencia en la ideación y el comportamiento suicida en general.
En tal dirección, otros estudios de revisión sistemática corroboran la regularidad de estos
hallazgos. Hernández-Bello et al. (2020), resumen que la ideación e intento de suicidio en
adolescentes tienen como factores asociados, entre otros, las malas relaciones con los padres
y el maltrato físico y psicológico. Por su parte, Enríquez et al. (2020), en su revisión sobre la
depresión en la adolescencia, sintetizan que la comunicación y la cohesión son los aspectos
más estudiados del funcionamiento familiar en este objeto y demuestran su papel en el
surgimiento y cronicidad de este trastorno, en esta edad.
Abundante evidencia constata el rol de la disfuncionalidad familiar en el desarrollo del
comportamiento violento, expresado de forma directa a través de la agresividad (Mego,
2020),
o
ejercida
por
medios
digitales,
en
este
caso,
Machimbarrena
et
al.
(2019)
identificaron, entre las variables familiares asociadas a los roles de víctima y victimarios del
bullying, la presencia de la disfuncionalidad familiar, referida a la presencia de conflictos,
pobre comunicación, atención y apoyo al adolescente. Estos mismos autores resumieron
características similares en ambos roles en ciber agresores. Los resultados de la revisión
sistemática realizada por Carrasco y Gutiérrez (2021), constataron lo obtenido en este
estudio, al reportar que en el 100% de los trabajos analizados, la funcionalidad familiar se
relacionó inversamente y de forma significativa con la violencia en parejas de novios
adolescentes, donde encontraron, entre los aspectos asociados a este fenómeno, el maltrato
recibido en la infancia, la pobre comunicación, la falta de apoyo y el estilo de crianza
inconsistente.
Es importante señalar que, con independencia del encuadre socio psicológico expuesto en el
apartado de introducción y justificación teórica de la investigación, en las discusiones de los
resultados de los artículos revisados, no aparecen análisis que argumenten la participación
del contexto social en la relación entre el funcionamiento familiar y las variables de la
adolescencia estudiadas. Sin embargo, en el estudio de la familia es indispensable la
interpretación de lo obtenido, en función de la realidad en la que se desarrolla la familia y el
adolescente. No se trata solo de la exploración puntual de estas cuestiones (acceso al trabajo,
tipo de familia, número de hermanos, estrato social), sino de la comprensión de lo que ello
significa para los resultados que se analizan.
Para ilustrar lo anterior, se destaca en este estudio, que, el 68.8% de las distintas fuentes
bibliográficas revisadas declararon estudiar alumnos del sistema público de educación en los
diferentes países, lo que delimita particularidades del entorno socioeconómico y cultural que
Vol.6 No.4 (2022): Journal Scientific
Investigar ISSN: 2588–0659
https://doi.org/10.56048/MQR20225.6.4.2022.03-23
Vol.6-N° 4, 2022, pp. 03-23
Journal Scientific
MQRInvestigar 19
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tienen repercusión en las características y la dinámica familiar, pero éstas no son abordadas.
Esta
carencia,
constituye
un
sesgo
importante
en
estos
de
estudios,
que
limita
la
generalización de sus resultados.
Esta revisión se enfocó a estudios con metodología cuantitativa y correlacionales, en los que
se asume la limitación de no establecer relaciones de causalidad, por lo que la evidencia
obtenida debe complementarse con estudios de corte explicativo que amplíen la visión sobre
el objeto de investigación. Además de esta dificultad, presentaron vulnerabilidades en la
calidad metodológica del diseño dado, en lo fundamental, por las estrategias de muestreo y
la omisión de los sesgos o cómo solucionarlos, aspectos reportados antes por Navarro-Loli
et al. (2017), que advierten igual irregularidades en las fuentes bibliográficas de su revisión,
con la consecuente afectación a la validez interna y externa de estas investigaciones.
Los resultados obtenidos en esta investigación dan orientación sobre los principales efectos
del
funcionamiento
familiar
en
la
adolescencia
y
con
ello,
sobre
las
prioridades
de
intervención para dar mayor protección a los adolescentes actuales.
Conclusiones
A la luz de los resultados obtenidos en esta revisión sistemática, el funcionamiento familiar
tiene un efecto comprobado como protector y como riesgo para el desarrollo de los
adolescentes, sobre todo en aspectos relacionados con el comportamiento escolar, las
adicciones, el estado afectivo emocional y las cualidades personales.
Referencias bibliográficas
Alonso Castillo, M., Yañez Lozano, A., Armendáriz García, N. (2017). Funcionalidad
familiar y consumo de alcohol en adolescentes de secundaria. Salud y drogas, 17(1),
87-96. https://www.redalyc.org/pdf/839/83949782009.pdf
Auquilla Guzmán, A. (2021).
Funcionamiento familiar en relación con la conducta sexual de
riesgo en adolescentes: Una revisión integradora de la literatura. South Florida
Journal of Development, 2(2), 3700-3716. DOI: 10.46932/sfjdv2n2-208
Aviléz, M. y Campos-Uscanga, Y. (2018). El funcionamiento familiar como factor clave en
la instauración y mantenimiento de hábitos alimentarios saludables. Revista Salud
Quintana Roo, 11(39), 25-26.
https://salud.qroo.gob.mx/revista/revistas/39/PDF/5.%20EL%20FUNCIONAMIEN
TO%20FAMILIAR%20COMO%20FACTOR%20CLAVE.pdf
Aylwin, N. y Solar, M. O. (2002). Trabajo social familiar. Universidad Católica de Chile.
Barcelata, B., Granados, A. y Ramírez, A. (2013). Correlatos entre funcionamiento familiar
y apoyo social percibido en escolares en riesgo psicosocial. Revista Mexicana de
Orientación
Educativa,
10(24),
65-70.
Vol.6 No.4 (2022): Journal Scientific
Investigar ISSN: 2588–0659
https://doi.org/10.56048/MQR20225.6.4.2022.03-23
Vol.6-N° 4, 2022, pp. 03-23
Journal Scientific
MQRInvestigar 20
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Vol.6 No.4 (2022): Journal Scientific
Investigar ISSN: 2588–0659
https://doi.org/10.56048/MQR20225.6.4.2022.03-23
Vol.6-N° 4, 2022, pp. 03-23
Journal Scientific
MQRInvestigar 22
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Vol.6 No.4 (2022): Journal Scientific
Investigar ISSN: 2588–0659
https://doi.org/10.56048/MQR20225.6.4.2022.03-23
Vol.6-N° 4, 2022, pp. 03-23
Journal Scientific
MQRInvestigar 23
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Conflicto de intereses:
Los autores declaran que no existe conflicto de interés posible.
Financiamiento:
No existió asistencia financiera de partes externas al presente artículo.
Agradecimiento:
N/A
Nota:
El artículo no es producto de una publicación anterior, tesis, proyecto, etc.