International Journal of Innovative Research in Computer and Communication Engineering
ISSN Approved Journal | Impact factor: 8.771 | ESTD: 2013 | Follows UGC CARE Journal Norms and Guidelines
| Monthly, Peer-Reviewed, Refereed, Scholarly, Multidisciplinary and Open Access Journal | High Impact Factor 8.771 (Calculated by Google Scholar and Semantic Scholar | AI-Powered Research Tool | Indexing in all Major Database & Metadata, Citation Generator | Digital Object Identifier (DOI) |
| TITLE | A Predictive Intelligence System for Early Childhood Health Risk Assessment |
|---|---|
| ABSTRACT | Early childhood is a critical phase in which timely health monitoring can prevent long- term developmental issues, yet many risk conditions go unnoticed due to delayed checkups and limited awareness among parents. In order to solve this issue, this project presents a Predictive Intelligence System designed to assess early childhood health risks using machine learning–based analysis. The system collects key health parameters such as height, weight, BMI, temperature, heart rate, nutrition details, and relevant maternal history, and processes them through a trained prediction model to identify risk levels. By categorizing results into low, medium, or high risk, the system enables parents and healthcare workers to understand potential health concerns at an early stage. The interface is built to be simple, responsive, and user-friendly, ensuring easy data entry and instant prediction output. The system not only improves decision-making but also supports continuous health tracking by storing previous records for future analysis. This intelligent solution aims to promote early detection, reduce medical delays, and contribute to healthier childhood development through efficient, data-driven risk assessment. |
| AUTHOR | KRUTHIKA PATEL P S, DR. PUJA SHASHI PG Student, Dept. of MCA, City Engineering College, Bengaluru, India Professor & HOD, Dept. of MCA, City Engineering College, Bengaluru, India |
| VOLUME | 177 |
| DOI | 10.15680/IJIRCCE.2025.1312071 |
| pdf/71_A Predictive Intelligence System for Early Childhood Health Risk Assessment.pdf | |
| KEYWORDS | |
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