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Machine Learning in Healthcare System

1 Citations•2025•
Abhishek Purohit, Yuvraj Kararwal
INTERANTIONAL JOURNAL OF SCIENTIFIC RESEARCH IN ENGINEERING AND MANAGEMENT

In conclusion, machine learning has enormous potential to improve healthcare by improving diagnoses, customizing treatments, and increasing operational efficiency.

Abstract

Machine learning (ML) is transforming healthcare by improving diagnosis accuracy, customizing treatment regimens, and reducing administrative procedures. Its capacity to analyze large datasets and detect complex patterns has resulted in major improvements in patient care and operational efficiency. In diagnostics, ML algorithms have shown extraordinary skill in analyzing medical pictures such as X-rays and MRIs, frequently outperforming humans. For example, ML models in radiology may detect abnormalities with amazing precision, aiding early illness identification and increasing patient outcomes. Beyond diagnostics, ML helps to customize medicine by assessing patient data and tailoring treatment strategies. By taking into account individual features and reactions, ML-driven models may prescribe medicines that improve efficacy while reducing negative effects. This tailored approach is especially useful for controlling chronic illnesses and complicated situations. Operationally, machine learning optimizes healthcare management by anticipating patient admissions, controlling hospital resources, and enhancing supply chain logistics. Predictive analytics enables healthcare institutions to predict patient demands, assuring proper staffing and resource allocation, so improving patient care while lowering operating expenses. Despite these advances, incorporating machine learning into healthcare offers a number of hurdles, including data privacy issues, the requirement for big, high-quality datasets, and the need for openness in algorithmic decisions. Addressing these concerns is critical to the ethical and successful use of ML technology in healthcare contexts. In conclusion, machine learning has enormous potential to improve healthcare by improving diagnoses, customizing treatments, and increasing operational efficiency. Continuous research and development are required to overcome current hurdles and fully exploit the benefits of ML in healthcare systems. Keywords: Machine Learning, Artificial Intelligence, SMEs, healthcare- sector, Ecommerce, E- commerce.