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首页> 外文期刊>Computerized Medical Imaging and Graphics: The Official Jounal of the Computerized Medical Imaging Society >Early detection of ankylosing spondylitis using texture features and statistical machine learning, and deep learning, with some patient ageanalysis Riel
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Early detection of ankylosing spondylitis using texture features and statistical machine learning, and deep learning, with some patient ageanalysis Riel

机译:利用纹理特征和统计机器学习的早期检测强直性脊柱炎,深入学习,有一些患者慢性分析瑞尔

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Ankylosin spondylitis (AS) is an arthritis with symptoms visible in medical imagery. This paper proposes, to the authors' best knowledge, the first use of statistical machine learning- and deep learning-based classifiers to detect erosion, an early AS symptom, via analysis of computed tomography (CT) imagery, giving some consideration to patient age in so doing. We used gray-level co-occurrence matrices and local binary patterns to generate input features to machine learning algorithms, specifically k-nearest neighbors (k-NN) and random forest. Deep learning solutions based on a modified InceptionV3 architecture were designed and tested, with one classifier produced by training with a cross-entropy loss function and another produced by additionally seeking to minimize validation loss. We found that the random forest classifiers outperform the k-NN classifiers and achieve an eightfold cross-validation average accuracy, recall, and area under receiver operator characteristic curve (ROC AUC) of 96.0%, 92.9%, and 0.97, respectively, for erosion vs. young control patients, and 82.4%, 80.6%, and 0.91, respectively, for erosion vs. old control patients. We found that the deep learning classifier trained without minimizing validation loss was best and achieves an eightfold cross-validation accuracy, recall, and ROC AUC of 99.0%, 97.5%, and 0.97, respectively, for erosion vs. all (combined young and old) control patients; this classifier outperforms a musculoskeletal radiologist with 9 years of experience in raw sensitivity and specificity by8.4% and 9.5%, respectively. Despite the relatively small dataset on which we trained and cross-validated, our results indicate the potential of machine and deep learning to aid AS diagnosis, and further research using larger datasets should be conducted. (C) 2020 Published by Elsevier Ltd.
机译:Ankylosin脊柱炎(AS)是医疗图像中可见的关节炎。本文提出了对作者最佳知识,首次使用统计机器学习和基于深度学习的分类器来检测侵蚀,早期作为症状,通过分析计算断层扫描(CT)图像,给予患者年龄的一些考虑在这样做。我们使用灰度级共有矩阵和本地二进制模式来生成机器学习算法的输入特征,特别是k最近邻居(K-NN)和随机林。设计并测试了基于改进的Inceptionv3架构的深度学习解决方案,其中通过跨熵丢失功能训练和另外寻求最小化验证损失而产生的一个分类器。我们发现随机森林分类器优于K-NN分类器,并在接收器操作员特征曲线(ROC AUC)下,分别为96.0%,92.9%和0.97的接收器操作员特征曲线(ROC AUC),以实现侵蚀的八倍交叉验证平均精度,召回和面积对于患者进行侵蚀与旧对照患者,幼年控制患者,82.4%,80.6%和0.91例。我们发现,在没有最小化验证损失的情况下培训的深度学习分类器是最佳的,并且可以分别实现八倍的交叉验证准确度,召回和ROC AUC,分别为99.0%,97.5%和0.97的侵蚀VS.PLS(组合年轻和旧)控制患者;该分类器分别优于肌肉骨骼放射学家,其生长敏感性9年的经验和特异性分别为8.4%和9.5%。尽管我们培训和交叉验证的数据集相对较小的数据集,但我们的结果表明机器和深度学习帮助作为诊断的潜力,并应进行使用较大数据集的进一步研究。 (c)2020年由elestvier有限公司发布

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