深度学习增强骨关节炎分级标准化。

IF 3.5 3区 医学 Q3 CELL & TISSUE ENGINEERING
Tissue Engineering Part A Pub Date : 2024-10-01 Epub Date: 2023-12-15 DOI:10.1089/ten.TEA.2023.0206
Lacksaya Nagarajan, Aadyant Khatri, Arnav Sudan, Raju Vaishya, Sourabh Ghosh
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引用次数: 0

摘要

为了研究骨关节炎(OA)的程度和严重程度,人工对软骨组织学图像进行分级涉及对细胞特征的严格检查,这使得这项任务变得无聊、乏味且容易出错。这导致观测者之间的广泛差异,导致OA等级预测的模糊性。人工评估的这些缺点可以通过实施基于人工智能(AI)的自动图像分类技术(如深度学习(DL))来克服。因此,在本文中,我们提出了用软骨组织学图像训练深度神经网络的可行性,该网络可以基于改进的Mankin评分系统对膝关节OA的程度和严重程度进行评分。本文采用的OA自动分级系统根据组织学图像的显微观察进行了简化和修改,其中考虑了三个参数(Safranin-O染色强度、软骨细胞分布和排列、形态学)来评估OA的进展。根据已开发的分级系统(0-3级)对组织学图像进行平铺、标记和分组。尝试了四种不同的深度学习模型进行图像分类,并通过五重验证方法选出了表现最好的模型。DenseNet121的验证精度约为84%,Cohen's kappa得分为0.632,ROC-AUC在0.89-0.99之间,是四个模型中表现最好的模型,用于对新数据的推理。从模型中获得的最终等级与医学专家提供的等级一致。我们在此证明DL架构可以被教导来解释软骨退化的程度,在所有四类OA严重程度中具有出色的区分能力。与其他研究中考虑影像学图像对OA分级不同,我们考虑了组织学图像,这是分级OA程度和严重程度的基本方法。这将带来基于组织学的OA评估的范式转变,使这种自动化方法成为OA评分标准化的一种选择。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning Augmented Osteoarthritis Grading Standardization.

Manual grading of cartilage histology images for investigating the extent and severity of osteoarthritis (OA) involves critical examination of the cell characteristics, which makes this task tiresome, tedious, and error prone. This results in wide interobserver variation, causing ambiguities in OA grade prediction. Such drawbacks of manual assessment can be overcome by implementing artificial intelligence-based automated image classification techniques such as deep learning (DL). Hence, we present the feasibility of training a deep neural network with cartilage histology images, which can grade the extent and severity of knee OA based on modified Mankin scoring system. The grading system used here for automating OA grading was simplified and modified based on the microscopic observations from the histology images, where three parameters (Safranin-O staining intensity, chondrocyte distribution and arrangement, and morphology) were considered for evaluating the OA progression. The histology images were tiled, labeled, and grouped together based on the developed grading system (Grade 0-3). Four different DL architectures were tried for image classification and the best performing model was selected by fivefold validation method. With a validation accuracy of ∼84%, 0.632 Cohen's kappa score, and an excellent receiver operating characteristic (ROC)-area under the ROC curve ranging between 0.89 and 0.99, DenseNet121 was selected among the four models as the best performing model, and was used for inferencing on new data. Final grades obtained from the models were in accordance with the grades provided by the medical experts. We hereby demonstrate that a DL architecture can be taught to interpret the degree of cartilage degradation, with excellent discriminatory ability across all four classes of OA severity. Unlike other works where radiographic images have been considered for grading of OA, we have considered histology images, which is a fundamental approach for grading OA extent and severity. This would bring a paradigm shift in histology-based assessment of OA, making this automated approach to be explored as an option for OA grading standardization. Ethical approval number-IAH-BMR-018/10-19.

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来源期刊
Tissue Engineering Part A
Tissue Engineering Part A Chemical Engineering-Bioengineering
CiteScore
9.20
自引率
2.40%
发文量
163
审稿时长
3 months
期刊介绍: Tissue Engineering is the preeminent, biomedical journal advancing the field with cutting-edge research and applications that repair or regenerate portions or whole tissues. This multidisciplinary journal brings together the principles of engineering and life sciences in the creation of artificial tissues and regenerative medicine. Tissue Engineering is divided into three parts, providing a central forum for groundbreaking scientific research and developments of clinical applications from leading experts in the field that will enable the functional replacement of tissues.
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