首页> 外文期刊>Journal of Engineering and Science in Medical Diagnostics and Therapy >Applying Machine Learning Methods Toward Classification Based on Small Datasets: Application to Shoulder Labral Tears
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Applying Machine Learning Methods Toward Classification Based on Small Datasets: Application to Shoulder Labral Tears

机译:应用机器学习方法的方向分类基于小数据集:应用程序的肩膀拉伤

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摘要

Machine learning is a powerful tool that can be applied to pattern search and mathematical optimization for making predictions on new data with unknown labels. In the field of medical imaging, one challenge with applying machine learning techniques is the limited size and relative expense of obtaining labeled data. For example, in glenoid labral tears, current imaging diagnosis is best achieved by imaging through magnetic resonance (MR) arthrography, a method of injecting contrast-enhancing material into the joint that can potentially cause discomfort to the patient, and adds expense compared to a standard magnetic resonance image (MRI). This work proposes limiting the use of MR arthrography through a medical diagnostic approach, based on convolutional neural networks(CNNs) and transfer learning from a separate medical imaging dataset to improve the efficiency and effectiveness. The results indicate an effective method applied to a small dataset of unenhanced shoulder MRI in order to diagnose labral tear severity while potentially significantly reducing cost and reducing unnecessary invasive imaging techniques. The proposed method ultimately can reduce physician workload while ensuring that the least number of patients as possible need to be subjected to an additional invasive contrast-enhanced imaging procedure.
机译:机器学习是一个强大的工具,它可以用于搜索和数学模式优化新数据做出预测与未知的标签。成像,应用机器的一个挑战学习技术是有限的大小和获取标签数据的相关费用。在关节窝的拉伤,目前的成像最好是通过成像诊断磁共振(MR)关节摄影术,方法注入充当材料联合,还有可能造成不适病人,并添加费用相比标准的磁共振影像(MRI)。工作提出了限制使用关节摄影术先生通过一个医疗诊断的方法,基于卷积神经网络(cnn)和转移学习从一个单独的医学影像数据集提高效率和有效性。结果表明应用到一个有效的方法小数据集unenhanced肩膀MRI诊断上唇的撕裂程度减少成本和潜在的显著减少不必要的侵入性成像技术。该方法最终可以减少医生工作负载同时确保最少的需要的患者数量受到额外的入侵超声造影成像过程。

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