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@article{188605,
author = {Samruddhi and Sakshi Hattikar and Vaishnavi Yalgulkar and Pishanna Patil},
title = {Multiple Cancer Prediction},
journal = {International Journal of Innovative Research in Technology},
year = {2025},
volume = {12},
number = {7},
pages = {4295-4301},
issn = {2349-6002},
url = {https://ijirt.org/article?manuscript=188605},
abstract = {Cancer remains one of the most critical health concerns worldwide, with the number of cases rising each year due to lifestyle changes, genetic factors, and limited access to early diagnostic services. Delayed detection continues to be a major reason for increased mortality, as many patients are identified only when the disease has already progressed. This challenge highlights the need for fast, reliable, and accessible tools that can support early screening. In response to this demand, the present study introduces an integrated machine- learning-based system capable of predicting multiple cancer types, including lung, blood, breast, and brain cancer. The proposed framework employs a set of refined machine learning algorithms that analyze clinical records, diagnostic attributes, and image-based inputs to detect subtle patterns associated with early cancer development. By extracting key features and evaluating them through optimized models, the system offers improved prediction accuracy and consistency across different cancer categories. Beyond diagnosis, the platform incorporates a patient-centered support ecosystem that provides personalized yoga routines, diet suggestions, and lifestyle guidance to assist users in managing physical and emotional well-being. An AI- enabled health chatbot is also included to answer medical queries, guide users through symptoms, and promote health awareness. Additionally, the system connects individuals to nearby hospitals, government healthcare schemes, NGOs, and potential donors through an interactive mapping and assistance module. By combining predictive analytics with supportive healthcare features, the proposed solution aims to enhance early detection, strengthen user engagement, and improve overall access to cancer-related resources},
keywords = {Machine Learning, Multi-Cancer Prediction, Early Diagnosis, Clinical Data Analysis, Health Chatbot, Wellness Recommendation, Medical Support System, AI-Driven Screening, Patient-Centric Healthcare, Diagnostic Automation},
month = {December},
}
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