Presentation
15 February 2021 Improve global glomerulosclerosis classification with imbalanced data using CircleMix augmentation
Author Affiliations +
Abstract
Classification of glomerular lesions is a routine and essential task in renal pathology. Recently, machine learning approaches, especially deep learning algorithms, have been used to perform computer-aided lesion characterization of glomeruli. However, one major challenge of developing such methods is the naturally imbalanced distribution of different types of lesions. In this paper, we propose CircleMix, a novel data augmentation technique, to improve the accuracy of classifying globally sclerotic glomeruli with a hierarchical learning strategy. Different from the recently proposed CutMix method, the CircleMix augmentation is optimized for the ball-shaped biomedical objects, such as glomeruli. 8,841 glomeruli with five classes (normal, periglomerular fibrosis, obsolescent glomerulosclerosis, solidified glomerulosclerosis, and disappearing glomerulosclerosis) were employed to develop and evaluate the proposed methods. From five-fold cross validation, the proposed methods achieved superior performance of classification (F1 = 71.2%), compared with the MobileNetV2 baseline (F1 = 68.7%).
Conference Presentation
© (2021) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Yuzhe Lu, Haichun Yang, Zheyu Zhu, Ruining Deng, Agnes B. Fogo, and Yuankai Huo "Improve global glomerulosclerosis classification with imbalanced data using CircleMix augmentation", Proc. SPIE 11596, Medical Imaging 2021: Image Processing, 1159609 (15 February 2021); https://doi.org/10.1117/12.2580482
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KEYWORDS
Biomedical optics

Machine learning

Pathology

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