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Objective quantification of brain arteriolosclerosis remains an area of ongoing refinement in neuropathology, with current methods primarily utilizing semi-quantitative scales completed through manual histological examination. These approaches offer modest inter-rater reliability and do not provide precise quantitative metrics. To address this gap, we present a prototype end-to-end machine learning (ML)-based algorithm, Arteriolosclerosis Segmentation (ArtSeg), followed by Vascular Morphometry (VasMorph) - to assist persons in the morphometric analysis of arteriolosclerotic vessels on whole slide images (WSIs). We digitized hematoxylin and eosin-stained glass slides (13 participants, total 42 WSIs) of human brain frontal or occipital lobe cortical and/or periventricular white matter collected from three brain banks (University of California, Davis, Irvine, and Los Angeles Alzheimer's Disease Research Centers). ArtSeg comprises three ML models for blood vessel detection, arteriolosclerosis classification, and segmentation of arteriolosclerotic vessel walls and lumens. For blood vessel detection, ArtSeg achieved area under the receiver operating characteristic curve (AUC-ROC) values of 0.79 (internal hold-out testing) and 0.77 (external testing), Dice scores of 0.56 (internal hold-out) and 0.74 (external), and Hausdorff distances of 2.53 (internal hold-out) and 2.15 (external). Arteriolosclerosis classification demonstrated accuracies of 0.94 (mean, 3-fold cross-validation), 0.86 (internal hold-out), and 0.77 (external), alongside AUC-ROC values of 0.69 (mean, 3-fold cross-validation), 0.87 (internal hold-out), and 0.83 (external). For arteriolosclerotic vessel segmentation, ArtSeg yielded Dice scores of 0.68 (mean, 3-fold cross-validation), 0.73 (internal hold-out), and 0.71 (external); Hausdorff distances of 7.63 (mean, 3-fold cross-validation), 6.93 (internal hold-out), and 7.80 (external); and AUC-ROC values of 0.90 (mean, 3-fold cross-validation), 0.92 (internal hold-out), and 0.87 (external). VasMorph successfully derived sclerotic indices, vessel wall thicknesses, and vessel wall to lumen area ratios from ArtSeg-segmented vessels, producing results comparable to expert assessment. This integrated approach shows promise as an assistive tool to enhance current neuropathological evaluation of brain arteriolosclerosis, offering potential for improved inter-rater reliability and quantification.
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http://dx.doi.org/10.17879/freeneuropathology-2025-6387 | DOI Listing |
Arch Gynecol Obstet
August 2025
Department of Obstetrics and Gynecology, Lis Hospital for Women's Health, Tel Aviv Sourasky Medical Center, 6 Weizmann St, 6423906, Tel Aviv, Israel.
Purpose: To identify risk factors and to develop a predictive model for cesarean delivery (CD) in women with gestational diabetes mellitus (GDM).
Study Design: A retrospective cohort study, in a single university-affiliated tertiary medical center, was performed. All women with GDM and a singleton pregnancy who had a trial of labor between 2011 and 2023 were included.
Ewha Med J
July 2025
Department of Dermatology, Ewha Womans University College of Medicine, Seoul, Korea.
Purpose: This study developed and validated a deep learning model for the automated early detection of androgenetic alopecia (AGA) using trichoscopic images, and evaluated the model's diagnostic performance in a Korean clinical cohort.
Methods: We conducted a retrospective observational study using 318 trichoscopic scalp images labeled by board-certified dermatologists according to the Basic and Specific (BASP) system, collected at Ewha Womans University Medical Center between July 2018 and January 2024. The images were categorized as BASP 0 (no hair loss) or BASP 1-3 (early-stage hair loss).
Objective: Blood-based biomarkers offer an unprecedented opportunity to realize the promise of precision medicine in improving diagnostic workflows. Previous peer-reviewed studies have established the association of the circulating glycoproteome with ovarian cancer. Here a glycoproteomic classifier was built, tested, and applied to both internal and external validation cohorts to distinguish malignant from benign pelvic masses.
View Article and Find Full Text PDFCirc Genom Precis Med
August 2025
Cardiovascular Disease Initiative, Broad Institute of MIT and Harvard, Cambridge, MA (M.S.K., S. Khurshid, S. Kany, L.-C.W., S.U., C.R., L.W., S.J.J., J.T.R., P.T.E., A.C.F.).
Background: Clinical factors discriminate incident atrial fibrillation (AF) risk with moderate accuracy, with only modest improvement after incorporation of polygenic risk scores. Whether emerging large-scale proteomic profiling can augment AF risk estimation is unknown.
Methods: In the UK Biobank cohort, we derived and validated a machine learning model to predict incident AF risk using serum proteins (Pro-AF).
Free Neuropathol
June 2025
Department of Pathology and Laboratory Medicine, School of Medicine, University of California Davis, Sacramento, USA.
Objective quantification of brain arteriolosclerosis remains an area of ongoing refinement in neuropathology, with current methods primarily utilizing semi-quantitative scales completed through manual histological examination. These approaches offer modest inter-rater reliability and do not provide precise quantitative metrics. To address this gap, we present a prototype end-to-end machine learning (ML)-based algorithm, Arteriolosclerosis Segmentation (ArtSeg), followed by Vascular Morphometry (VasMorph) - to assist persons in the morphometric analysis of arteriolosclerotic vessels on whole slide images (WSIs).
View Article and Find Full Text PDF