EASL: A Framework for Designing, Implementing, and Evaluating ML Solutions in Clinical Healthcare Settings.

Proc Mach Learn Res

Department of Biostatistics & Informatics, Morgan Adams Foundation for Pediatric Brain Tumor Research Program, Colorado School of Public Health, Aurora, Colorado, USA.

Published: August 2023

AI Article Synopsis

  • The Explainable Analytical Systems Lab (EASL) framework is an all-in-one solution for building, implementing, and assessing clinical machine learning tools, adaptable to various scenarios.
  • It consists of three modules: the Workbench for data and ML model development, the Canvas for medical imaging visualization and web integration, and the Studio for hosting ML models along with analytics.
  • EASL promotes a comprehensive approach by combining model development and evaluation, ultimately enhancing the effectiveness and reliability of machine learning applications in healthcare.

Article Abstract

We introduce the Explainable Analytical Systems Lab (EASL) framework, an end-to-end solution designed to facilitate the development, implementation, and evaluation of clinical machine learning (ML) tools. EASL is highly versatile and applicable to a variety of contexts and includes resources for data management, ML model development, visualization and user interface development, service hosting, and usage analytics. To demonstrate its practical applications, we present the EASL framework in the context of a case study: designing and evaluating a deep learning classifier to predict diagnoses from medical imaging. The framework is composed of three modules, each with their own set of resources. The Workbench module stores data and develops initial ML models, the Canvas module contains a medical imaging viewer and web development framework, and the Studio module hosts the ML model and provides web analytics and support for conducting user studies. EASL encourages model developers to take a holistic view by integrating the model development, implementation, and evaluation into one framework, and thus ensures that models are both effective and reliable when used in a clinical setting. EASL contributes to our understanding of machine learning applied to healthcare by providing a comprehensive framework that makes it easier to develop and evaluate ML tools within a clinical setting.

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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11235083PMC

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