Artificial intelligence neuropathologist for glioma classification using deep learning on hematoxylin and eosin stained slide images and molecular markers

Author:

Jin Lei12,Shi Feng3,Chun Qiuping3,Chen Hong4,Ma Yixin12,Wu Shuai12,Hameed N U Farrukh12,Mei Chunming5,Lu Junfeng12,Zhang Jun5,Aibaidula Abudumijiti12,Shen Dinggang3,Wu Jinsong126

Affiliation:

1. Glioma Surgery Division, Neurologic Surgery Department, Huashan Hospital, Fudan University, Shanghai, China

2. Shanghai Key laboratory of Brain Function Restoration and Neural Regeneration

3. Shanghai United Imaging Intelligence Co, Shanghai, China

4. Department of Pathology, Huashan Hospital, Fudan University, Shanghai, China

5. Wuhan Zhongji Biotechnology Co, Wuhan, China

6. Institute of Brain-Intelligence Technology, Zhangjiang Lab

Abstract

Abstract Background Pathological diagnosis of glioma subtypes is essential for treatment planning and prognosis. Standard histological diagnosis of glioma is based on postoperative hematoxylin and eosin stained slides by neuropathologists. With advancing artificial intelligence (AI), the aim of this study was to determine whether deep learning can be applied to glioma classification. Methods A neuropathological diagnostic platform is designed comprising a slide scanner and deep convolutional neural networks (CNNs) to classify 5 major histological subtypes of glioma to assist pathologists. The CNNs were trained and verified on over 79 990 histological patch images from 267 patients. A logical algorithm is used when molecular profiles are available. Results A new model of the squeeze-and-excitation block DenseNet with weighted cross-entropy (named SD-Net_WCE) is developed for the glioma classification task, which learns the recognizable features of glioma histology CNN-based independent diagnostic testing on data from 56 patients with 17 262 histological patch images demonstrated patch level accuracy of 86.5% and patient level accuracy of 87.5%. Histopathological classifications could be further amplified to integrated neuropathological diagnosis by 2 molecular markers (isocitrate dehydrogenase and 1p/19q). Conclusion The model is capable of solving multiple classification tasks and can satisfactorily classify glioma subtypes. The system provides a novel aid for the integrated neuropathological diagnostic workflow of glioma.

Funder

Shanghai Municipal Science and Technology Major Project

Shanghai Brain Bank technical system

Publisher

Oxford University Press (OUP)

Subject

Cancer Research,Clinical Neurology,Oncology

Reference28 articles.

1. The 2016 World Health Organization classification of tumors of the central nervous system: a summary;Louis;Acta Neuropathol.,2016

2. Chapter 5 - Histologic classification of gliomas.;Perry,2016

3. Survival and prognostic factors of anaplastic gliomas;Miriam;Neurosurgery,2013

4. Interobserver variation of the histopathological diagnosis in clinical trials on glioma: a clinician’s perspective;Van den Bent;Acta Neuroapthologica,2010

5. Histopathological diagnosis of leprosy type 1 reaction with emphasis on interobserver variation;Sharma;Indian J Lepr.,2015

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