depression detection by using tweets
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Updated
Feb 10, 2019 - Python
depression detection by using tweets
machine learning models for predicting depression based on EEG data
Edison AT is software Depression Assistant personal.
A real time Multimodal Emotion Recognition web app for text, sound and video inputs
Towards Explainable Multimodal Depression Recognition for Clinical Interviews
Statistics for Suicide Analysis for all the countries in the world using Machine Learning Algorithms to find some interesting patterns, solutions and Clues about Suicides using Data Analysis and Data Visualizations
Deep Learning based research project for predicting mental state of a person.
sMRI based depression classification using 3D volumetric convolutional networks
Can LMs generate useful synthetic data for the mental health domain?
My final year dissertation project. This project takes motor activity data from a control group and a condition group. The data is filtered, cleaned and transformed for appropriate use to find the "best" classification algorithm to identify depressed patients from non-depressed patients
This project focuses on predicting depression among students using various machine learning models. It explores relationships between key factors like sleep duration, gender, financial stress, work/study hours, and academic pressure with depression. The study leverages EDA and multiple ML algorithms to achieve high prediction accuracy.
2D and 3D deformable CNN Autoencoders
Android application for Identification of stress symptoms, comparison and remedial solutions provided through chat-bot(Neo).
Depression Detection is a speech-based classifier that analyzes emotional and acoustic features to detect depression.
An interactive one-page website that provides a compendium on neurotransmitters (dopamine, norepinephrine, serotonin, and melatonin) and their role in psychophysiology. The page analyzes symptoms of deficiency/excess, core functions, interactions, and systemic connections to disorders such as depression, ADHD, and PTSD.
Prototype for predicting the severity of depression based on machine learning models deployed over the Google Cloud Platform using Firebase.
Aperiodic EEG markers for magnetic seizure therapy and electro-convulsive therapy trials of depression
Predicting depression from daily gross motor activity
Codes for paper:A Prompt-Based Learning Approach for Few-Shot Social Media Depression Detection
Website for depression analysis by using LSTM-based model to classify depressive tweets.
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