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The Use of Random Forests to Classify Amyloid Brain PET

Authors :
Jean-Paul Soucy
Alexander Thiel
Howard Chertkow
Robert Laforce
Katherine Zukotynski
Vincent Gaudet
Robin Hsiung
Vesna Sossi
Maged Goubran
Eric E. Smith
Sandra E. Black
Demetrios J. Sahlas
Christian Bocti
Michael Borrie
Frank S. Prato
Sabrina Adamo
Jean-Claude Tardif
Richard Frayne
Michael D. Noseworthy
Christopher J.M. Scott
Phillip H. Kuo
Source :
Clinical Nuclear Medicine. 44:784-788
Publication Year :
2019
Publisher :
Ovid Technologies (Wolters Kluwer Health), 2019.

Abstract

To evaluate random forests (RFs) as a supervised machine learning algorithm to classify amyloid brain PET as positive or negative for amyloid deposition and identify key regions of interest for stratification.The data set included 57 baseline F-florbetapir (Amyvid; Lilly, Indianapolis, IN) brain PET scans in participants with severe white matter disease, presenting with either transient ischemic attack/lacunar stroke or mild cognitive impairment from early Alzheimer disease, enrolled in a multicenter prospective observational trial. Scans were processed using the MINC toolkit to generate SUV ratios, normalized to cerebellar gray matter, and clinically read by 2 nuclear medicine physicians with interpretation based on consensus (35 negative, 22 positive). SUV ratio data and clinical reads were used for supervised training of an RF classifier programmed in MATLAB.A 10,000-tree RF, each tree using 15 randomly selected cases and 20 randomly selected features (SUV ratio per region of interest), with 37 cases for training and 20 cases for testing, had sensitivity = 86% (95% confidence interval [CI], 42%-100%), specificity = 92% (CI, 64%-100%), and classification accuracy = 90% (CI, 68%-99%). The most common features at the root node (key regions for stratification) were (1) left posterior cingulate (1039 trees), (2) left middle frontal gyrus (1038 trees), (3) left precuneus (857 trees), (4) right anterior cingulate gyrus (655 trees), and (5) right posterior cingulate (588 trees).Random forests can classify brain PET as positive or negative for amyloid deposition and suggest key clinically relevant, regional features for classification.

Details

ISSN :
15360229 and 03639762
Volume :
44
Database :
OpenAIRE
Journal :
Clinical Nuclear Medicine
Accession number :
edsair.doi.dedup.....639555657b0184517c1b3be4a69185fb