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Comparison of Three Automated Approaches for Classification of Amyloid-PET Images.

Authors :
Nai, Ying-Hwey
Tay, Yee-Hsin
Tanaka, Tomotaka
Chen, Christopher P.
Robins, Edward G.
Reilhac, Anthonin
Source :
NeuroInformatics; Oct2022, Vol. 20 Issue 4, p1065-1075, 11p
Publication Year :
2022

Abstract

Automated amyloid-PET image classification can support clinical assessment and increase diagnostic confidence. Three automated approaches using global cut-points derived from Receiver Operating Characteristic (ROC) analysis, machine learning (ML) algorithms with regional SUVr values, and deep learning (DL) network with 3D image input were compared under various conditions: number of training data, radiotracers, and cohorts. 276 [<superscript>11</superscript>C]PiB and 209 [<superscript>18</superscript>F]AV45 PET images from ADNI database and our local cohort were used. Global mean and maximum SUVr cut-points were derived using ROC analysis. 68 ML models were built using regional SUVr values and one DL network was trained with classifications of two visual assessments – manufacturer's recommendations (gray-scale) and with visually guided reference region scaling (rainbow-scale). ML-based classification achieved similarly high accuracy as ROC classification, but had better convergence between training and unseen data, with a smaller number of training data. Naïve Bayes performed the best overall among the 68 ML algorithms. Classification with maximum SUVr cut-points yielded higher accuracy than with mean SUVr cut-points, particularly for cohorts showing more focal uptake. DL networks can support the classification of definite cases accurately but performed poorly for equivocal cases. Rainbow-scale standardized image intensity scaling and improved inter-rater agreement. Gray-scale detects focal accumulation better, thus classifying more amyloid-positive scans. All three approaches generally achieved higher accuracy when trained with rainbow-scale classification. ML yielded similarly high accuracy as ROC, but with better convergence between training and unseen data, and further work may lead to even more accurate ML methods. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
15392791
Volume :
20
Issue :
4
Database :
Complementary Index
Journal :
NeuroInformatics
Publication Type :
Academic Journal
Accession number :
159816631
Full Text :
https://doi.org/10.1007/s12021-022-09587-2