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首页> 外文期刊>npj Digital Medicine >High-dimensional detection of imaging response to treatment in multiple sclerosis
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High-dimensional detection of imaging response to treatment in multiple sclerosis

机译:多发性硬化症治疗的成像反应的高尺寸检测

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Changes on brain imaging may precede clinical manifestations or disclose disease progression opaque to conventional clinical measures. Where, as in multiple sclerosis, the pathological process has a complex anatomical distribution, such changes are not easily detected by low-dimensional models in common use. This hinders our ability to detect treatment effects, both in the management of individual patients and in interventional trials. Here we compared the ability of conventional models to detect an imaging response to treatment against high-dimensional models incorporating a wide multiplicity of imaging factors. We used fully-automated image analysis to extract 144 regional, longitudinal trajectories of pre- and post- treatment changes in brain volume and disconnection in a cohort of 124 natalizumab-treated patients. Low- and high-dimensional models of the relationship between treatment and the trajectories of change were built and evaluated with machine learning, quantifying performance with receiver operating characteristic curves. Simulations of randomised controlled trials enrolling varying numbers of patients were used to quantify the impact of dimensionality on statistical efficiency. Compared to existing methods, high-dimensional models were superior in treatment response detection (area under the receiver operating characteristic curve = 0.890 [95% CI = 0.885–0.895] vs. 0.686 [95% CI = 0.679–0.693], P  0.01]) and in statistical efficiency (achieved statistical power = 0.806 [95% CI = 0.698–0.872] vs. 0.508 [95% CI = 0.403–0.593] with number of patients enrolled = 50, at α = 0.01). High-dimensional models based on routine, clinical imaging can substantially enhance the detection of the imaging response to treatment in multiple sclerosis, potentially enabling more accurate individual prediction and greater statistical efficiency of randomised controlled trials.
机译:脑成像的变化可能先于临床表现,或向常规临床措施公开疾病进展不透明。如在多发性硬化的那样,病理过程具有复杂的解剖分布,在常用使用中不容易检测到这种变化。这会阻碍我们检测治疗效果的能力,这些患者在各个患者的管理和介入试验中。在这里,我们比较了传统模型来检测对治疗的成像响应,其针对包含宽多种成像因子的高维模型的治疗。我们使用全自动图像分析,提取144个区域,纵向轨迹的预治疗和治疗后的血脑体积变化,并在124个NaTalizumab治疗的患者的队列中断开。使用机器学习,用机器学习,使用接收器操作特性曲线量化性能,建立和评估改变轨迹的低和高维模型。注册各种患者的随机对照试验的模拟用于量化维度对统计效率的影响。与现有方法相比,高尺寸模型在治疗响应检测(接收器下的区域下方的区域,操作特性曲线= 0.890 [95%CI = 0.885-0.895] Vs.0.686 [95%CI = 0.679-0.693],P <0.01 ])和统计效率(达到统计功率= 0.806 [95%CI = 0.698-0.872],0.508 [95%CI = 0.403-0.593],在α= 0.01时,患者数量= 50次。基于常规的高尺寸模型,临床成像可以基本上增强了对多发性硬化症中治疗的成像响应的检测,可能使更准确的个体预测和随机对照试验的更大统计效率。

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