基于cnn的深度集成CADx模型用于x线片肌肉骨骼异常检测

Tusher Chandra Mondol, Hasib Iqbal, M. Hashem
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引用次数: 13

摘要

肌肉骨骼疾病(MSDs)是一种侵犯人体运动的痛症和痛苦。目前,肌肉骨骼疾病的诊断依赖于x光片。有时医生或放射科医生会犯错误,误导对异常的诊断。因此,我们一直致力于开发一种基于深度卷积神经网络(Deep CNN)的新型计算机辅助诊断(CADx)系统,该系统将帮助医生通过x光片识别肌肉骨骼异常。我们使用VGG-19, ResNet架构构建了四种研究类型(肘关节,手腕,手指和肱骨)的模型。我们还采用了五重交叉验证法来评估我们的模型。然后,我们应用集成技术来提高模型的性能。最后,基于一些绩效评价指标,为每种研究类型和总体选择最佳绩效评价指标。我们提出的技术在名为“MURA”的基准射线照相数据集上进行了测试,并将最终结果与其他主要技术进行了比较。肘部、手指、肱骨、腕关节的模型性能依次为86.45%、82.13%、87.15%和87.86%。实验结果表明,我们提出的方法是解决肌肉骨骼异常检测的理想策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep CNN-Based Ensemble CADx Model for Musculoskeletal Abnormality Detection from Radiographs
Musculoskeletal Disorders (MSDs) are excoriations and afflictions that assail body movement of human. In present days diagnosis of musculoskeletal conditions are dependent on radiographs. Sometimes doctors or radiologist can make an error that can mislead the diagnosis of abnormalities. So, we have been motivated to develop a novel Computer-Aided Diagnosis(CADx) system based on Deep Convolutional Neural Network (Deep CNN) that will help the doctors to identify musculoskeletal abnormalities through radiographs. We have used VGG-19, ResNet architecture to build a model for four types of study (Elbow, Wrist, Finger, and Humerus). 5-fold cross-validation method is also applied to evaluate our models. Then we have applied ensemble techniques to improve the model’s performance. Finally, based on some performance evaluating metrics the best one is selected for each of the study types and in aggregate. Our proposed technique tested on a benchmark radiographic dataset named ‘MURA’, and the final result is compared to other prominent techniques. For Elbow, Finger, Humerus, Wrist study, model performance was consecutively 86.45%, 82.13%, 87.15%, and 87.86%. Experimental consequences show that our proposed method is a condign strategy to resolve musculoskeletal abnormalities detection.
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