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A Machine Learning Model for Automation of Ligament Injury Detection Process

机译:韧带损伤检测过程自动化机器学习模型

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Good exploitation of medical data is very useful for patient assessment. It requires a diversity of skills and expertise since it concerns a large number of issues. Traumatic pathology is by far the most frequent problem among young athletes. Sport injuries represent a large part of these accidents, and those of the knee are the most important, dominated by meniscal and ligamentous lesions including that of the anterior cruciate ligament (ACL). Magnetic Resonance Imaging (MRI) is the reference for knee exploration, the number of knee MRI exams is in a perpetual increase thus of its contribution in the patient assessment and MRI machines availability. Therefore, radiologist's time has become a limiting factor because of the large number of images to examine, in addition to the possibility of error in the interpretation. The possibility of automating certain interpretation functions is currently possible in order to limit the amount of errors and inter-observer variability. Deep learning is useful for disease detection in clinical radiology because it maximizes the diagnostic performance and reduces subjectivity and errors due to distraction, the complexity of the case, the misapplication of rules, or lack of knowledge. The purpose of this work is to generate a model that can extract ACL from MRI input data and classify its different lesions. We developed two convolutional neural networks (CNN) for a dual-purpose, the first is to isolate the ACL and the second to classify it according to the presence or absence of lesions. We investigate the possibility of automating the ACL tears diagnostic process by analyzing the data provided by cross sections of patient MRI images. The analysis and experiments based on real MRI data show that our approach substantially outperforms the existing deep learning models such as support vector machine and Random Forest Model, in terms of injury detection accuracy. Our model achieved an accuracy rate equal to 97.76%.
机译:良好的剥削医学数据对于患者评估非常有用。它需要多样性的技能和专业知识,因为它涉及大量问题。创伤病理到目前为止年轻运动员中最常见的问题。运动伤害代表这些事故的大部分部分,膝关节的那些是最重要的,由半月板和韧性病变主导,包括前十字韧带(ACL)的韧性病变。磁共振成像(MRI)是膝关节勘探的参考,膝关节MRI考试的数量是永久性的,因此在患者评估和MRI机器可用性方面的贡献。因此,放射科医师的时间已经成为一个限制因素,因为除了解释中的错误的可能性之外,还要检查。目前可能是自动化某些解释功能的可能性,以限制误差和观察者间变异性。深度学习对于临床放射学中的疾病检测有用,因为它可以最大限度地提高诊断性能并降低由于分散注意力,案件的复杂性,规则的误用,或缺乏知识的诊断性能和误差。这项工作的目的是生成一个可以从MRI输入数据中提取ACL的模型,并对其不同的病变进行分类。我们开发了两种卷积神经网络(CNN)的双型,首先是分离ACL和第二个,根据病变的存在或不存在来分类。我们调查通过分析患者MRI图像的横截面提供的数据来实现自动化ACL撕裂诊断过程的可能性。基于真正的MRI数据的分析和实验表明,在损伤检测精度方面,我们的方法在损伤检测准确性方面显着优于支持向量机和随机林模型等现有的深度学习模型。我们的模型实现了等于97.76%的精度率。

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