Machine Learning for Everyone: Simplifying Healthcare Analytics with BigQuery ML
Journal:
arXiv
Published Date:
Feb 10, 2025
Abstract
Machine learning (ML) transforms healthcare by enabling predictive analytics,
personalized treatments, and improved patient outcomes. However, traditional ML
workflows often require specialized skills, infrastructure, and resources,
limiting accessibility for many healthcare professionals. This paper explores
how BigQuery ML Cloud service helps healthcare researchers and data analysts to
build and deploy models using SQL, without need for advanced ML knowledge. Our
results demonstrate that the Boosted Tree model achieved the highest
performance among the three models making it highly effective for diabetes
prediction. BigQuery ML directly integrates predictive analytics into their
workflows to inform decision-making and support patient care. We reveal this
capability through a case study on diabetes prediction using the Diabetes
Health Indicators Dataset. Our study underscores BigQuery ML's role in
democratizing machine learning, enabling faster, scalable, and efficient
predictive analytics that can directly enhance healthcare decision-making
processes. This study aims to bridge the gap between advanced machine learning
and practical healthcare analytics by providing detailed insights into BigQuery
ML's capabilities. By demonstrating its utility in a real-world case study, we
highlight its potential to simplify complex workflows and expand access to
predictive tools for a broader audience of healthcare professionals.