医学
淀粉样蛋白(真菌学)
神经影像学
正电子发射断层摄影术
核医学
人工智能
病理
精神科
计算机科学
作者
Shuyang Fan,Maria Rosana Ponisio,Xiao Pan,Sung Min Ha,Satrajit Chakrabarty,John J. Lee,Shaney Flores,Pamela LaMontagne,Brian A. Gordon,Cyrus A. Raji,Daniel S. Marcus,Arash Nazeri,Beau M. Ances,Randall J. Bateman,John C. Morris,Tammie L.S. Benzinger,Aristeidis Sotiras
出处
期刊:Radiology
[Radiological Society of North America]
日期:2024-06-01
卷期号:311 (3)
被引量:2
标识
DOI:10.1148/radiol.231442
摘要
Background Visual assessment of amyloid PET scans relies on the availability of radiologist expertise, whereas quantification of amyloid burden typically involves MRI for processing and analysis, which can be computationally expensive. Purpose To develop a deep learning model to classify minimally processed brain PET scans as amyloid positive or negative, evaluate its performance on independent data sets and different tracers, and compare it with human visual reads. Materials and Methods This retrospective study used 8476 PET scans (6722 patients) obtained from late 2004 to early 2023 that were analyzed across five different data sets. A deep learning model, AmyloidPETNet, was trained on 1538 scans from 766 patients, validated on 205 scans from 95 patients, and internally tested on 184 scans from 95 patients in the Alzheimer's Disease Neuroimaging Initiative (ADNI) fluorine 18 (
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