ICLR 2023 paper - ManyDG - Dataset processing and mode codes
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Updated
Apr 14, 2024 - Python
ICLR 2023 paper - ManyDG - Dataset processing and mode codes
An advanced data mining model to predict hospital readmission in dataset of diabetes patients.
Repo for the final project of UIUC's CS598 Deep Learning for Healthcare to reproduce the DeepNote-GNN model
Importance of HBA1c in predictive Modeling of probability of Hospital Re-admission (CAPSTONE PROJECT)
Tatva-AI assist healthcare professionals in identifying high-risk patients and implementing interventions to reduce readmission rates, ultimately enhancing patient outcomes
This is an Machine Learning Course Academic Project where we worked extensively on Understanding the Health Care Data & Developing Machine Learning, Neural Network Models
Machine Learning–Based Prediction of 30-Day Heart-Failure Readmissions using classification models with EDA, feature engineering, and model evaluation.
Analysis on Diabetic Patients’ Hospital Admission & Classification of Readmission
[ACL Findings 2026] Official Implementation of "RePrompT: Recurrent Prompt Tuning for Integrating Structured EHR Encoders with Large Language Models"
XGBoost pipeline predicting hospital Excess Readmission Ratios on FY2024 CMS HRRP data. SHAP explainability, 5-fold CV (R² 0.938), and a live Streamlit dashboard for per-hospital risk assessment.
Code for the paper "A Novel Hyperparameter Search Approach for Accuracy and Simplicity in Disease Prediction Risk Scoring".
To predict whether a patient will readmit withon 30 days
Our objectives are to predict the readmission of Diabetic Patients and uncover the underlying reasons behind those readmissions
An executive-level financial and clinical dashboard for hospital readmission analysis, featuring Looker Studio integration and automated revenue cycle metrics.
Production-style diabetes hospital readmission prediction pipeline with leakage-aware preprocessing, XGBoost modeling, FastAPI serving, Streamlit demo, MLflow tracking, monitoring, Docker, and CI.
Machine learning project that predicts hospital readmission risk using patient data to improve healthcare outcomes and reduce costs.
Predictive analytics on diabetic patient readmissions using dbt, DuckDB and Python – with explainability and clustering.
Repo for applications of BERT in clinical settings
This project builds a machine learning pipeline to predict hospital readmissions within 30 days using electronic health record (EHR) data from diabetic patients
This end-to-end project predicts 30-day hospital readmission risk for diabetic patients using 100k+ encounters. I built a Scikit-Learn pipeline for data cleaning , deploying a Random Forest model with 0.94 recall.
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