J Oral Maxillofac Surg
October 2024
Traumatic ulcerative granuloma with stromal eosinophilia (TUGSE) is a reactive and chronic ulcerative lesion that is most frequently found on the tongue. It appears as a large yellowish ulcer with elevated margins and central induration. TUGSEs exhibit a characteristic pattern of regression often spontaneously, following incisional biopsy, or after removal of the potential traumatic trigger.
View Article and Find Full Text PDFImportance: Higher lymphedema rates after axillary lymph node dissection (ALND) have been found in Black and Hispanic women; however, there is poor correlation between subjective symptoms, quality of life (QOL), and measured lymphedema. Additionally, racial and ethnic differences in QOL have been understudied.
Objective: To evaluate the association of race and ethnicity with long-term QOL in patients with breast cancer treated with ALND.
Background: Outlining acutely infarcted tissue on non-contrast CT is a challenging task for which human inter-reader agreement is limited. We explored two different methods for training a supervised deep learning algorithm: one that used a segmentation defined by majority vote among experts and another that trained randomly on separate individual expert segmentations.
Methods: The data set consisted of 260 non-contrast CT studies in 233 patients with acute ischemic stroke recruited from the multicenter DEFUSE 3 (Endovascular Therapy Following Imaging Evaluation for Ischemic Stroke 3) trial.
We determined if a convolutional neural network (CNN) deep learning model can accurately segment acute ischemic changes on non-contrast CT compared to neuroradiologists. Non-contrast CT (NCCT) examinations from 232 acute ischemic stroke patients who were enrolled in the DEFUSE 3 trial were included in this study. Three experienced neuroradiologists independently segmented hypodensity that reflected the ischemic core on each scan.
View Article and Find Full Text PDFPerformance metrics for medical image segmentation models are used to measure the agreement between the reference annotation and the predicted segmentation. Usually, overlap metrics, such as the Dice, are used as a metric to evaluate the performance of these models in order for results to be comparable. However, there is a mismatch between the distributions of cases and the difficulty level of segmentation tasks in public data sets compared to clinical practice.
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