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| | Download PDFOpen PDF in browser Download PDFOpen PDF in browserAnomoly Detection in Medical ImagingEasyChair Preprint 129973 pages•Date: April 11, 2024AbstractThe contemporary landscape of healthcare has been profoundly transformed by the infusion of
 machine learning techniques, which have heralded a new
 era of disease prediction and management. This research
 endeavors to address a critical gap in the existing
 healthcare paradigm by developing a unified system
 capable of predicting multiple diseases using a
 streamlined interface. Focusing primarily on Random
 Forest, a robust ensemble learning algorithm, and
 harnessing the power of deep learning, this study
 pioneers a comprehensive approach to disease
 forecasting. The study's core objective revolves around
 the accurate prediction of a spectrum of diseases,
 ranging from diabetes and heart disease to chronic
 kidney disease and cancer. Early detection of these
 ailments is pivotal, as it significantly impacts patient
 outcomes and healthcare costs. Leveraging Random
 Forest, a versatile and efficient machine learning
 algorithm, this research meticulously evaluates its
 predictive capabilities. By optimizing hyperparameters
 and fine-tuning the model, the study ensures the highest
 level of accuracy in disease prognosis. Additionally, the
 research delves into the realm of deep learning, a subset
 of machine learning that mimics the intricate neural
 networks of the human brain.
 Keyphrases: Medical Diagnosis, Medical Imaging, Pre-detection, disease detection | 
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