Transforming Healthcare Decisions in the U.S. Through
Machine Learning
Affiliations
1
Computer Science & Engineering , North South University (NSU), N/A
Abstract
In the United States, early detection of diseases is critical to ensuring timely and effective
treatment, as many conditions, if not diagnosed promptly, can become untreatable or even
fatal. As a result, there is a growing reliance on advanced technologies to analyze complex
medical data, reports, and images with both speed and precision. In many cases, subtle
abnormalities in medical imaging may go unnoticed by the human eye, which is where
machine learning (ML) has become indispensable. ML techniques are increasingly used in
healthcare for data driven decision making, uncovering hidden patterns and anomalies that
traditional methods might miss. Although developing such algorithms is complex, the
greater challenge lies in optimizing them for higher accuracy while reducing processing
time. Over the years, the integration of ML into biomedical research has significantly
advanced the field, paving the way for innovations like precision medicine, which
customizes treatments based on a patient’s genetic profile. Today, machine learning
supports nearly every stage of healthcare delivery, from extracting critical information
from electronic health records to diagnosing diseases through medical image analysis. Its
role extends to patient management, resource optimization, and treatment development.
Particularly, deep learning, powered by modern high-performance computing, has shown
remarkable accuracy and reliability in these applications. It is now evident that in t...
Keywords:
Advanced technologies, Machine learning, Healthcare, Algorithms,
Biomedical research, diagnosing diseases, Medical image analysis