Deep Residual Learning-Based Classification with Identification of Incorrect Predictions and Quantification of Cellularity and Nuclear Morphological Features in Digital Pathological Images of Common Astrocytic Tumors

被引:0
作者
Chen, Yen-Chang [1 ,2 ,3 ]
Lin, Shinn-Zong [3 ,4 ,5 ,6 ,7 ]
Wu, Jia-Ru [8 ,9 ]
Yu, Wei-Hsiang [10 ]
Harn, Horng-Jyh [4 ,11 ]
Tsai, Wen-Chiuan [12 ]
Liu, Ching-Ann [4 ,5 ,9 ]
Kuo, Ken-Leiang [13 ]
Yeh, Chao-Yuan [10 ]
Tsai, Sheng-Tzung [3 ,5 ,6 ,7 ]
机构
[1] Buddhist Tzu Chi Med Fdn, Hualien Tzu Chi Hosp, Dept Anat Pathol, Div Digital Pathol, Hualien 970, Taiwan
[2] Tzu Chi Univ, Sch Med, Dept Pathol, Hualien 970, Taiwan
[3] Tzu Chi Univ, Inst Med Sci, Hualien 970, Taiwan
[4] Buddhist Tzu Chi Med Fdn, Bioinnovat Ctr, Hualien 970, Taiwan
[5] Buddhist Tzu Chi Med Fdn, Hualien Tzu Chi Hosp, Dept Neurosci Ctr, Hualien 970, Taiwan
[6] Buddhist Tzu Chi Med Fdn, Hualien Tzu Chi Hosp, Dept Neurosurg, Hualien 970, Taiwan
[7] Tzu Chi Univ, Sch Med, Dept Surg, Hualien 970, Taiwan
[8] Buddhist Tzu Chi Med Fdn, Hualien Tzu Chi Hosp, Integrat Ctr Tradit Chinese & Modern Med, Hualien 970, Taiwan
[9] Buddhist Tzu Chi Med Fdn, Hualien Tzu Chi Hosp, Dept Med Res, Hualien 970, Taiwan
[10] AetherAI Co Ltd, Taipei 115, Taiwan
[11] Buddhist Tzu Chi Med Fdn, Hualien Tzu Chi Hosp, Dept Anat Pathol, Div Mol Pathol, Hualien 970, Taiwan
[12] Natl Def Med Ctr, Triserv Gen Hosp, Dept Pathol, Taipei 114, Taiwan
[13] YuanLi Instrument Co Ltd, Taipei 114, Taiwan
关键词
digital pathological images; diffuse astrocytoma; anaplastic astrocytoma; glioblastoma; deep residual learning; residual neural network; hybrid task cascade; quantification; cellularity; nuclear morphological feature; ORGANIZATION; DIAGNOSIS; GLIOMA;
D O I
10.3390/cancers16132449
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
Simple Summary This study presented an artificial intelligence-based classification emphasizing error identification and quantification of cellularity and nuclear morphological features in digital pathological images of common astrocytic tumors. The identification of incorrect predictions was essential for the subsequent development of better techniques. Quantifying cellularity and nuclear morphological features brought deeper insights into neoplastic morphology and paved the way for further development of a scoring system for objective classification and precision diagnosis to improve interobserver variations.Abstract Interobserver variations in the pathology of common astrocytic tumors impact diagnosis and subsequent treatment decisions. This study leveraged a residual neural network-50 (ResNet-50) in digital pathological images of diffuse astrocytoma, anaplastic astrocytoma, and glioblastoma to recognize characteristic pathological features and perform classification at the patch and case levels with identification of incorrect predictions. In addition, cellularity and nuclear morphological features, including axis ratio, circularity, entropy, area, irregularity, and perimeter, were quantified via a hybrid task cascade (HTC) framework and compared between different characteristic pathological features with importance weighting. A total of 95 cases, including 15 cases of diffuse astrocytoma, 11 cases of anaplastic astrocytoma, and 69 cases of glioblastoma, were collected in Taiwan Hualien Tzu Chi Hospital from January 2000 to December 2021. The results revealed that an optimized ResNet-50 model could recognize characteristic pathological features at the patch level and assist in diagnosis at the case level with accuracies of 0.916 and 0.846, respectively. Incorrect predictions were mainly due to indistinguishable morphologic overlap between anaplastic astrocytoma and glioblastoma tumor cell area, zones of scant vascular lumen with compact endothelial cells in the glioblastoma microvascular proliferation area mimicking the glioblastoma tumor cell area, and certain regions in diffuse astrocytoma with too low cellularity being misrecognized as the glioblastoma necrosis area. Significant differences were observed in cellularity and each nuclear morphological feature among different characteristic pathological features. Furthermore, using the extreme gradient boosting (XGBoost) algorithm, we found that entropy was the most important feature for classification, followed by cellularity, area, circularity, axis ratio, perimeter, and irregularity. Identifying incorrect predictions provided valuable feedback to machine learning design to further enhance accuracy and reduce errors in classification. Moreover, quantifying cellularity and nuclear morphological features with importance weighting provided the basis for developing an innovative scoring system to achieve objective classification and precision diagnosis among common astrocytic tumors.
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页数:16
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