Department of Electronics and Computer Engineering, Ngee Ann Polytechnic, Singapore.
Department of Pathology and Cell Biology, Columbia University Irving Medical Center, USA.
Comput Methods Programs Biomed. 2021 May;203:106010. doi: 10.1016/j.cmpb.2021.106010. Epub 2021 Feb 27.
Celiac disease is an autoimmune disease occurring in about 1 in 100 people worldwide. Early diagnosis and efficient treatment are crucial in mitigating the complications that are associated with untreated celiac disease, such as intestinal lymphoma and malignancy, and the subsequent high morbidity. The current diagnostic methods using small intestinal biopsy histopathology, endoscopy, and video capsule endoscopy (VCE) involve manual interpretation of photomicrographs or images, which can be time-consuming and difficult, with inter-observer variability. In this paper, a machine learning technique was developed for the automation of biopsy image analysis to detect and classify villous atrophy based on modified Marsh scores. This is one of the first studies to employ conventional machine learning to automate the use of biopsy images for celiac disease detection and classification.
The Steerable Pyramid Transform (SPT) method was used to obtain sub bands from which various types of entropy and nonlinear features were computed. All extracted features were automatically classified into two-class and multi-class, using six classifiers.
An accuracy of 88.89%, was achieved for the classification of two-class villous abnormalities based on analysis of Hematoxylin and Eosin (H&E) stained biopsy images. Similarly, an accuracy of 82.92% was achieved for the two-class classification of red-green-blue (RGB) biopsy images. Also, an accuracy of 72% was achieved in the classification of multi-class biopsy images.
The results obtained are promising, and demonstrate the possibility of automating biopsy image interpretation using machine learning. This can assist pathologists in accelerating the diagnostic process without bias, resulting in greater accuracy, and ultimately, earlier access to treatment.
乳糜泻是一种自身免疫性疾病,全球约每 100 人中就有 1 人患病。早期诊断和有效治疗对于减轻未治疗乳糜泻相关并发症至关重要,这些并发症包括肠道淋巴瘤和恶性肿瘤,以及随之而来的高发病率。目前使用小肠活检组织病理学、内窥镜检查和视频胶囊内镜(VCE)的诊断方法涉及对显微照片或图像的人工解释,这可能既耗时又困难,且存在观察者间的变异性。在本文中,开发了一种机器学习技术,用于活检图像分析的自动化,以基于改良 Marsh 评分检测和分类绒毛萎缩。这是首次使用传统机器学习技术自动化使用活检图像来检测和分类乳糜泻的研究之一。
Steerable Pyramid Transform (SPT) 方法用于从子带中获取各种类型的熵和非线性特征。使用六种分类器自动将所有提取的特征分类为两类和多类。
基于苏木精和伊红(H&E)染色活检图像分析,对绒毛异常的两类分类,分类准确率达到 88.89%。同样,对红-绿-蓝(RGB)活检图像的两类分类,准确率达到 82.92%。此外,在多类活检图像的分类中,准确率达到 72%。
所得结果很有前途,证明了使用机器学习自动解释活检图像的可能性。这可以帮助病理学家在没有偏见的情况下加速诊断过程,从而提高准确性,并最终更早地获得治疗。