Application of machine learning classifiers to X‐ray diffraction imaging with medically relevant phantoms

Volume: 49, Issue: 1, Pages: 532 - 546
Published: Dec 1, 2021
Abstract
Recent studies have demonstrated the ability to rapidly produce large field of view X-ray diffraction (XRD) images, which provide rich new data relevant to the understanding and analysis of disease. However, work has only just begun on developing algorithms that maximize the performance toward decision-making and diagnostic tasks. In this study, we present the implementation of and comparison between rules-based and machine learning (ML)...
Paper Details
Title
Application of machine learning classifiers to X‐ray diffraction imaging with medically relevant phantoms
Published Date
Dec 1, 2021
Volume
49
Issue
1
Pages
532 - 546
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