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Foreground Detection Analysis of Ultrasound Image Sequences Identifies Markers of Motor Neurone Disease across Diagnostically Relevant Skeletal Muscles

机译:超声图像序列的前景检测分析可确定诊断相关骨骼肌中运动神经元疾病的标志物

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摘要

Diagnosis of motor neurone disease (MND) includes detection of small, involuntary muscle excitations, termed fasciculations. There is need to improve diagnosis and monitoring of MND through provision of objective markers of change. Fasciculations are visible in ultrasound image sequences. However, few approaches that objectively measure their occurrence have been proposed; their performance has been evaluated in only a few muscles; and their agreement with the clinical gold standard for fasciculation detection, intramuscular electromyography, has not been tested. We present a new application of adaptive foreground detection using a Gaussian mixture model (GMM), evaluating its accuracy across five skeletal muscles in healthy and MND-affected participants. The GMM provided good to excellent accuracy with the electromyography ground truth (80.17%–92.01%) and was robust to different ultrasound probe orientations. The GMM provides objective measurement of fasciculations in each of the body segments necessary for MND diagnosis and hence could provide a new, clinically relevant disease marker.
机译:运动神经元疾病(MND)的诊断包括检测到小的,非自愿的肌肉兴奋,称为肌束颤动。有必要通过提供客观的变化指标来改善对MND的诊断和监测。在超声图像序列中可见束状。但是,几乎没有提出客观测量其发生的方法。仅在少数肌肉中评估了它们的表现;并且它们尚未与肌电图检测的临床金标准,肌内肌电图检查相一致。我们提出了一种使用高斯混合模型(GMM)的自适应前景检测的新应用,用于评估健康和受MND影响的参与者的五个骨骼肌的准确性。 GMM可提供极佳的肌电图真实性(80.17%–92.01%)精度,并且对不同的超声探头方向均具有较强的鲁棒性。 GMM提供了MND诊断所必需的每个身体节段中的纤毛的客观测量,因此可以提供一种新的,临床上相关的疾病标记。

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