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Prediction of amyloid β PET positivity using machine learning in patients with suspected cerebral amyloid angiopathy markers
被引:0
|作者:
Young Hee Jung
Hyejoo Lee
Hee Jin Kim
Duk L. Na
Hyun Jeong Han
Hyemin Jang
Sang Won Seo
机构:
[1] Hanyang University,Department of Neurology, College of Medicine, Myoungji Hospital
[2] Sungkyunkwan University of School of Medicine,Department of Neurology
[3] Samsung Medical Center,Department of Intelligent Precision Healthcare Convergence
[4] Neuroscience Center,Department of Health Science and Technology
[5] Samsung Medical Center,Stem Cell and Regenerative Medicine Institute
[6] Samsung Alzheimer Research Center,undefined
[7] Research Institute for Future Medicine,undefined
[8] Samsung Medical Center,undefined
[9] Sungkyunkwan University,undefined
[10] SAIHST,undefined
[11] Sungkyunkwan University,undefined
[12] Samsung Medical Center,undefined
来源:
Scientific Reports
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10卷
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摘要:
Amyloid-β(Aβ) PET positivity in patients with suspected cerebral amyloid angiopathy (CAA) MRI markers is predictive of a worse cognitive trajectory, and it provides insights into the underlying vascular pathology (CAA vs. hypertensive angiopathy) to facilitate prognostic prediction and appropriate treatment decisions. In this study, we applied two interpretable machine learning algorithms, gradient boosting machine (GBM) and random forest (RF), to predict Aβ PET positivity in patients with CAA MRI markers. In the GBM algorithm, the number of lobar cerebral microbleeds (CMBs), deep CMBs, lacunes, CMBs in dentate nuclei, and age were ranked as the most influential to predict Aβ positivity. In the RF algorithm, the absence of diabetes was additionally chosen. Cut-off values of the above variables predictive of Aβ positivity were as follows: (1) the number of lobar CMBs > 16.4(GBM)/14.3(RF), (2) no deep CMBs(GBM/RF), (3) the number of lacunes > 7.4(GBM/RF), (4) age > 74.3(GBM)/64(RF), (5) no CMBs in dentate nucleus(GBM/RF). The classification performances based on the area under the receiver operating characteristic curve were 0.83 in GBM and 0.80 in RF. Our study demonstrates the utility of interpretable machine learning in the clinical setting by quantifying the relative importance and cutoff values of predictive variables for Aβ positivity in patients with suspected CAA markers.
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