Kyu-Hong Lee, Ro-Woon Lee, Jae-Sung Yun, Myung-Sub Kim, Hyun-Seok Choi
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引用次数: 0
摘要
背景:膝关节骨关节炎(OA)是一种普遍存在的退行性关节疾病,对全球健康造成严重影响。早期准确的诊断对于有效治疗至关重要,但传统方法往往依赖于主观评估。本研究评估了通过无代码人工智能平台实施的深度学习模型对普通X光片进行膝关节OA诊断和分级的效果。方法我们利用骨关节炎倡议(OAI)数据集,其中包括 1526 名患者的膝关节 X 光片数据。数据分为训练集(47.0%)、验证集(26.5%)和测试集(26.5%)。我们在 DEEP:PHI 无代码人工智能平台上使用 ResNet101 模型进行图像分析。根据 Kellgren-Lawrence 量表,训练模型将膝关节 OA 分为五个等级(0-4)。结果我们的人工智能模型在区分不同的 OA 等级方面表现出很高的准确性,尤其是在早期检测方面。该模型在 20 个epochs时达到最佳性能,表明学习动力高效。Grad-CAM 可视化技术的使用提高了模型决策过程的可解释性。结论本研究展示了通过无代码平台实现的人工智能在从X光片准确诊断膝关节OA并对其进行分级方面的潜力。使用像 DEEP:PHI 这样的无代码人工智能平台代表着医疗保健领域向人工智能民主化迈出了一步,使复杂的医疗人工智能应用的快速开发和部署成为可能,而无需大量的编码专业知识。这种方法可以大大提高膝关节 OA 的早期检测和管理水平,从而改善患者预后并简化临床工作流程。
Automated Diagnosis of Knee Osteoarthritis Using ResNet101 on a DEEP:PHI: Leveraging a No-Code AI Platform for Efficient and Accurate Medical Image Analysis.
Background: Knee osteoarthritis (OA) is a prevalent degenerative joint disease significantly impacting global health. Early and accurate diagnosis is crucial for effective management, but traditional methods often rely on subjective assessments. This study evaluates the efficacy of a deep learning model implemented through a no-code AI platform for diagnosing and grading knee OA from plain radiographs. Methods: We utilized the Osteoarthritis Initiative (OAI) dataset, comprising knee X-ray data from 1526 patients. The data were split into training (47.0%), validation (26.5%), and test (26.5%) sets. We employed a ResNet101 model on the DEEP:PHI no-code AI platform for image analysis. The model was trained to classify knee OA into five grades (0-4) based on the Kellgren-Lawrence scale. Results: Our AI model demonstrated high accuracy in distinguishing between different OA grades, with particular strength in early-stage detection. The model achieved optimal performance at 20 epochs, suggesting efficient learning dynamics. Grad-CAM visualizations were used to enhance the interpretability of the model's decision-making process. Conclusions: This study demonstrates the potential of AI, implemented through a no-code platform, to accurately diagnose and grade knee OA from radiographs. The use of a no-code AI platform such as DEEP:PHI represents a step towards democratizing AI in healthcare, enabling the rapid development and deployment of sophisticated medical AI applications without extensive coding expertise. This approach could significantly enhance the early detection and management of knee OA, potentially improving patient outcomes and streamlining clinical workflows.
DiagnosticsBiochemistry, Genetics and Molecular Biology-Clinical Biochemistry
CiteScore
4.70
自引率
8.30%
发文量
2699
审稿时长
19.64 days
期刊介绍:
Diagnostics (ISSN 2075-4418) is an international scholarly open access journal on medical diagnostics. It publishes original research articles, reviews, communications and short notes on the research and development of medical diagnostics. There is no restriction on the length of the papers. Our aim is to encourage scientists to publish their experimental and theoretical research in as much detail as possible. Full experimental and/or methodological details must be provided for research articles.