Automated differential diagnosis of dementia syndromes using FDG PET and machine learning

被引:9
作者
Perovnik, Matej [1 ,2 ,3 ]
Vo, An [3 ]
Nguyen, Nha [4 ]
Jamsek, Jan [5 ]
Rus, Tomaz [1 ]
Tang, Chris C. C. [3 ]
Trost, Maja [1 ,2 ,5 ]
Eidelberg, David [3 ]
机构
[1] Univ Med Ctr Ljubljana, Dept Neurol, Ljubljana, Slovenia
[2] Univ Ljubljana, Fac Med, Ljubljana, Slovenia
[3] Feinstein Inst Med Res, Ctr Neurosci, New York, NY 11030 USA
[4] Albert Einstein Coll Med, Dept Genet, New York, NY USA
[5] Univ Med Ctr Ljubljana, Dept Nucl Med, Ljubljana, Slovenia
来源
FRONTIERS IN AGING NEUROSCIENCE | 2022年 / 14卷
关键词
dementia; differential diagnosis; visual reading; machine learning; FDG PET; ALZHEIMERS-DISEASE; LEWY BODIES; VISUAL ASSESSMENT; BRAIN NETWORKS; VALIDATION; PATTERNS;
D O I
10.3389/fnagi.2022.1005731
中图分类号
R592 [老年病学]; C [社会科学总论];
学科分类号
03 ; 0303 ; 100203 ;
摘要
BackgroundMetabolic brain imaging with 2-[F-18]fluoro-2-deoxy-D-glucose positron emission tomography (FDG PET) is a supportive diagnostic and differential diagnostic tool for neurodegenerative dementias. In the clinic, scans are usually visually interpreted. However, computer-aided approaches can improve diagnostic accuracy. We aimed to build two machine learning classifiers, based on two sets of FDG PET-derived features, for differential diagnosis of common dementia syndromes. MethodsWe analyzed FDG PET scans from three dementia cohorts [63 dementia due to Alzheimer's disease (AD), 79 dementia with Lewy bodies (DLB) and 23 frontotemporal dementia (FTD)], and 41 normal controls (NCs). Patients' clinical diagnosis at follow-up (25 +/- 20 months after scanning) or cerebrospinal fluid biomarkers for Alzheimer's disease was considered a gold standard. FDG PET scans were first visually evaluated. Scans were pre-processed, and two sets of features extracted: (1) the expressions of previously identified metabolic brain patterns, and (2) the mean uptake value in 95 regions of interest (ROIs). Two multi-class support vector machine (SVM) classifiers were tested and their diagnostic performance assessed and compared to visual reading. Class-specific regional feature importance was assessed with Shapley Additive Explanations. ResultsPattern- and ROI-based classifier achieved higher overall accuracy than expert readers (78% and 80% respectively, vs. 71%). Both SVM classifiers performed similarly to one another and to expert readers in AD (F1 = 0.74, 0.78, and 0.78) and DLB (F1 = 0.81, 0.81, and 0.78). SVM classifiers outperformed expert readers in FTD (F1 = 0.87, 0.83, and 0.63), but not in NC (F1 = 0.71, 0.75, and 0.92). Visualization of the SVM model showed bilateral temporal cortices and cerebellum to be the most important features for AD; occipital cortices, hippocampi and parahippocampi, amygdala, and middle temporal lobes for DLB; bilateral frontal cortices, middle and anterior cingulum for FTD; and bilateral angular gyri, pons, and vermis for NC. ConclusionMulti-class SVM classifiers based on the expression of characteristic metabolic brain patterns or ROI glucose uptake, performed better than experts in the differential diagnosis of common dementias using FDG PET scans. Experts performed better in the recognition of normal scans and a combined approach may yield optimal results in the clinical setting.
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页数:12
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