Machine Learning in Modern Healthcare
Creators
- 1. Department of AIT CSE, Chandigarh University, Mohali (Punjab) India.
Contributors
Contact person:
- 1. Department of AIT CSE, Chandigarh University, Mohali (Punjab) India.
Description
Abstract: Traditional healthcare systems have long struggled to meet the diverse needs of millions of patients, leading to inefficiencies and suboptimal outcomes. However, the advent of machine learning (ML) has introduced a transformative paradigm shift towards value-based treatment, enabling healthcare providers to deliver personalized and highly effective care.Modern healthcare equipment and devices now incorporate internal applications that gather and store comprehensive patient data, presenting a valuable resource for ML-driven predictive models. In this research article, we delve into the profound impact of ML on modern healthcare, highlighting its potential to significantly enhance patient care and optimize resource allocation. Our study presents a robust predictive model capable of accurately forecasting patient diseases based on input information and various parameters, harnessing the power of extensive datasets encompassing diverse patient populations. We compared several ML algorithms, including Logistic Regression (accuracy: 0.796875), K-Nearest Neighbors (accuracy: 0.7864583333333334), XG Boost (accuracy: 0.78125), and Py Torch (accuracy: 0.7337662337662337), to determine the best-performing model. The achieved accuracies demonstrate the effectiveness of these ML techniques in disease prediction and showcase the potential for improving patient outcomes. Beyond the technical aspects, we explore the broader implications of value-based treatment and the integration of ML for various healthcare stakeholders. By emphasizing the numerous benefits of personalized and proactive medical care, our findings illustrate the substantial potential of ML-driven predictive healthcare models to revolutionize traditional healthcare systems. The adoption of ML in healthcare lays the foundation for a more efficient, effective, and patient-centered medical ecosystem, supporting the sustainability and adaptability of healthcare systems in the face of expanding patient populations and complex medical needs. This article significantly contributes to the field by providing comprehensive insights into the experimental stages, showcasing the achieved results, and highlighting the key conclusions derived from our study. By addressing the limitations of the previous abstract, we ensure a more informative and substantial overview of our research, offering valuable knowledge for for researchers, practitioners, and decision-makers striving to leverage the power of ML in healthcare innovation.
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Additional details
Related works
- Is cited by
- Journal article: 2582-7596 (ISSN)
References
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Subjects
- ISSN: 2582-7596 (Online)
- https://portal.issn.org/resource/ISSN/2582-7596#
- Retrieval Number:100.1/ijamst.D3037063423
- https://www.ijamst.latticescipub.com/portfolio-item/d3037063423/
- Journal Website: www.ijamst.latticescipub.com
- https://www.ijamst.latticescipub.com/
- Publisher: Lattice Science Publication (LSP)
- https://www.latticescipub.com/