4.6 Article

Robust Classification and Detection of Big Medical Data Using Advanced Parallel K-Means Clustering, YOLOv4, and Logistic Regression

Journal

LIFE-BASEL
Volume 13, Issue 3, Pages -

Publisher

MDPI
DOI: 10.3390/life13030691

Keywords

medical data; medical imaging; data classification; image detection; YOLOv4; logistic regression; machine learning; AI; deep learning

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Big-medical-data classification and image detection are important in healthcare. Logistic regression and YOLOv4 have limitations with big medical data. We proposed a robust approach using logistic regression and YOLOv4, enhanced by parallel k-means pre-processing and a neural engine processor. Our approach accurately classified medical data and detected medical images, improving the performance of logistic regression and YOLOv4 and offering a promising solution for healthcare.
Big-medical-data classification and image detection are crucial tasks in the field of healthcare, as they can assist with diagnosis, treatment planning, and disease monitoring. Logistic regression and YOLOv4 are popular algorithms that can be used for these tasks. However, these techniques have limitations and performance issue with big medical data. In this study, we presented a robust approach for big-medical-data classification and image detection using logistic regression and YOLOv4, respectively. To improve the performance of these algorithms, we proposed the use of advanced parallel k-means pre-processing, a clustering technique that identified patterns and structures in the data. Additionally, we leveraged the acceleration capabilities of a neural engine processor to further enhance the speed and efficiency of our approach. We evaluated our approach on several large medical datasets and showed that it could accurately classify large amounts of medical data and detect medical images. Our results demonstrated that the combination of advanced parallel k-means pre-processing, and the neural engine processor resulted in a significant improvement in the performance of logistic regression and YOLOv4, making them more reliable for use in medical applications. This new approach offers a promising solution for medical data classification and image detection and may have significant implications for the field of healthcare.

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