Algorithms (Nov 2009)

Predicting Radiological Panel Opinions Using a Panel of Machine Learning Classifiers

  • Samuel G. Armato III,
  • Jacob Furst,
  • Dmitriy Zinovev,
  • Daniela Raicu

DOI
https://doi.org/10.3390/a2041473
Journal volume & issue
Vol. 2, no. 4
pp. 1473 – 1502

Abstract

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This paper uses an ensemble of classifiers and active learning strategies to predict radiologists’ assessment of the nodules of the Lung Image Database Consortium (LIDC). In particular, the paper presents machine learning classifiers that model agreement among ratings in seven semantic characteristics: spiculation, lobulation, texture, sphericity, margin, subtlety, and malignancy. The ensemble of classifiers (which can be considered as a computer panel of experts) uses 64 image features of the nodules across four categories (shape, intensity, texture, and size) to predict semantic characteristics. The active learning begins the training phase with nodules on which radiologists’ semantic ratings agree, and incrementally learns how to classify nodules on which the radiologists do not agree. Using our proposed approach, the classification accuracy of the ensemble of classifiers is higher than the accuracy of a single classifier. In the long run, our proposed approach can be used to increase consistency among radiological interpretations by providing physicians a “second read”.

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