ALENTAR-J-CM PROJECT

Research for youth well-being and mental health

ALENTAR-J-CM PROJECT

Research for youth well-being and mental health

Our mission

ALENTAR-J-CM comes from the project’s acronym Large Language Models Application for large-scale healthcare prevention of mental health problems and suicide risk among young people.
This research project will develop and implement an advanced system based on Large Language Models (LLMs) for the early detection and assessment of emotional disorders and suicide risk among young people (ages 12 to 25).

ayuda joven

AI to detect and prevent emotional disorders in young people

Our main research objective is to develop an advanced technological prototype, based on Large Language Models (LLMs), to support clinical health professionals in their daily work—particularly in the detection and evaluation of emotional disorder risks (anxiety, depression, etc.) and suicide risk in adolescents and young people.
We aim to be pioneers in offering fast, effective and reliable tool to prevent the emergence and development of these mental health problem, while contributing with our knowledge to research and clinical intervention.
ALENTAR-J-CM is constantly evolving, adapting to mental health challenges and strengthening its commitment through research and the implementation of affective language models.

OUR APPROACH

Objective and action plan

Detecting linguistic markers

We analyze discourse markers and paralinguistic features to support the detection and prevention of emotional problems in young people.

Developing algorithms

We design systems based on LLMs for the early detection and prevention of mental health issues and suicidal behavior.

Detection of linguistic markers

icon identificacion
step-01

Identification

We will identify and define paralinguistic and discourse parameters.

icon analisis
step-02

Analysis

We will collect and analyze written and vocal expression data from diverse populations.

icon validacion
step-03

Validation

We will validate the obtained parameters in real-world contexts.

icon desarrollo
step-04

Development

We will develop evidence-based prevention resources and services.

icon identificacion
step-01

Identification

We will identify and define paralinguistic and discourse parameters.

icon analisis
step-02

Analysis

We will collect and analyze written and vocal expression data from diverse populations.

icon validacion
step-03

Validation

We will validate the obtained parameters in real-world contexts.

icon desarrollo
step-04

Development

We will develop evidence-based prevention resources and services.

Algorithm development

icon algoritmo
STEP-01

Identification

We will develop LLM-based algorithms to identify linguistic markers.

icon nlp
STEP-02

Validation

We will design and validate LLM-based algorithms using new field data obtained from our clinical studies.

icon software
STEP-03

Implementation

We will create software prototypes for social and healthcare centers and hospitals.

icon algoritmo
STEP-01

Identification

We will develop LLM-based algorithms to identify linguistic markers.

icon nlp
STEP-02

Validation

We will design and validate LLM-based algorithms using new field data obtained from our clinical studies.

icon software
STEP-03

Implementation

We will create software prototypes for social and healthcare centers and hospitals.

IMPLEMENTATION

Project phases

fases proyecto
WP1

Model training with existing data

Identification and definition of paralinguistic and discourse parameters.

Automatic reading of medical records.

Model training with data from psychological support hotlines and chat services

wp2

Field studies

Written and vocal expression data collection and analysis.

Validation of parameters in real-world contexts.

Development and validation of LLM-based algorithms using new data.

WP3

Advanced Large Language Models

Development and validation of LLM-based algorithms using new field data derived from clinical studies.

WP4

Software prototype

Development of a support system prototype for community and hospital-based services.
Implementation of a software prototype for social and healthcare centers and hospitals.

implementation

Project phases

fases proyecto
WP1

Model training with existing data

Identification and definition of paralinguistic and discourse parameters.

Automatic reading of medical records.

Model training with data from psychological support hotlines and chat services

wp2

Field studies

Written and vocal expression data collection and analysis.

Validation of parameters in real-world contexts.

Development and validation of LLM-based algorithms using new data.

WP3

Advanced Large Language Models

Development and validation of LLM-based algorithms using new field data derived from clinical studies.

WP4

Software prototype

Development of a support system prototype for community and hospital-based services.
Implementation of a software prototype for social and healthcare centers and hospitals.

GET INVOLVED

Every step matters.

Let’s join efforts to support emotional well-being in our society.

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