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Optimizing the Use of Radiologist Seed Points for Improved Multiple Sclerosis Lesion Segmentation

机译:优化使用放射科医师的种子点以改善多发性硬化症病变分割

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Many current methods for multiple sclerosis (MS) lesion segmentation require radiologist seed points as input, but do not necessarily allow the expert to work in an intuitive or efficient way. Ironically, most methods also assume that the points are placed optimally. This paper examines how seed points can be processed with intuitive heuristics, which provide improved segmentation accuracy while facilitating quick and natural point placement. Using a large set of MRIs from an MS clinical trial, two radiologists are asked to seed the lesions while unaware that the points would be fed into a classifier, based on Parzen windows, that automatically delineates each marked lesion. To evaluate the impact of the new heuristics, an interactive region-growing method is used to provide ground truth and the Dice coefficient (DC) and Spearman’s rank correlation are used as the primary measures of agreement. A stratified analysis is performed to determine the effect on scans with low-, medium-, and high lesion loads. Compared to the unenhanced classifier, the heuristics dramatically improve the DC (+32.91 pt.) and correlation (+0.50) for the scans with low lesion loads, and also improve the DC (+14.55 pt.) and correlation (+0.15) for the scans with medium lesion loads, while having a minimal effect for the scans with high lesion loads, which are already segmented accurately by Parzen windows. With the heuristics, the DC is close to 80% and the correlation is above 0.9 for all three load categories.
机译:当前用于多发性硬化症(MS)病变分割的许多方法都需要放射科医生的种子点作为输入,但不一定允许专家以直观或有效的方式进行工作。具有讽刺意味的是,大多数方法还假定将这些点放置在最佳位置。本文研究了如何使用直观的启发式方法处理种子点,这些启发式方法在提高分割精度的同时还促进了快速自然的点放置。使用来自MS临床试验的大量MRI,要求两名放射科医生为病变播种,却不知道这些点将被送入基于Parzen窗口的分类器,该分类器会自动描绘每个标记的病变。为了评估新启发式方法的影响,使用了一种交互式区域增长方法来提供地面真实性,并且将骰子系数(DC)和Spearman等级相关性用作达成一致的主要指标。进行分层分析以确定低,中和高病变负荷对扫描的影响。与未增强的分类器相比,该启发式方法显着改善了低病变负荷扫描的DC(+32.91 pt。)和相关性(+0.50),还提高了DC(+14.55 pt。)和相关性(+0.15)具有中等病变负荷的扫描,而对于具有较高病变负荷的扫描的影响最小,这些病变负荷已被Parzen窗口精确分割。使用启发式方法,对于所有三个负载类别,DC都接近80%,并且相关性都高于0.9。

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