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A comparison of human observer LROC and numerical observer ROC for tumor detection in SPECT images

机译:人类观察者LROC和数值观察者ROC在SPECT图像中检测肿瘤的比较

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Numerical observers that predict human performance in medical detection tasks can relieve some of the burden of conducting psychophysical studies. Research for this purpose has dealt primarily with receiver operating characteristic (ROC) studies with "signal-known-exactly" (SKE) detection tasks. However, clinical tasks requiring searching for tumors are more closely associated with localization ROC (LROC) studies. The authors have compared performances of humans in a LROC study to performances of a channelized Hotelling observer (CHO) in a SKE ROC study. The task was tumor detection in simulated Ga-67 scans of the chest region. The studies compared different image filters created by varying the dimensionality and cut-off frequency of a 5th-order Butterworth filter. Image reconstruction was by filtered backprojection (FBP) with multiplicative Chang attenuation correction. A total of 35 tumor locations were used. Human LROC results for 4 participants were acquired from a study of 140 images per strategy. The LROC ratings are given as areas under the LROC curve. For the ROC study, 2 constant-Q channel models were used, with parameters determined from a previous comparison of human and CHO performance in a SKE ROC study. The CHO's were applied to 200 noise realizations per location and strategy. The CHO ratings of the filtering strategies are given as areas under the ROC curve averaged over location. Correlation between the human and numerical observers was quantified with Spearman rank correlation tests. Rank correlation coefficients of 0.857 and 0.952 were found. The authors conclude that a ROC study with these constant-Q CHO's may be used to distinguish between considerably superior and inferior strategies, and thus reduce the number of strategies considered by human observers in an LROC study.
机译:可以预测人类在医学检测任务中的表现的数字观察员可以减轻进行心理物理学研究的负担。为此目的的研究主要涉及带有“精确已知信号”(SKE)检测任务的接收机工作特性(ROC)研究。但是,需要搜索肿瘤的临床任务与本地化ROC(LROC)研究紧密相关。作者将LROC研究中的人类表现与SKE ROC研究中的通道化Hotelling观察者(CHO)的表现进行了比较。任务是在胸部的模拟Ga-67扫描中检测肿瘤。研究比较了通过改变5阶Butterworth滤波器的尺寸和截止频率创建的不同图像滤波器。通过滤波的反投影(FBP)和乘法Chang衰减校正来重建图像。总共使用了35个肿瘤部位。每个策略的140张图像研究获得了4位参与者的人类LROC结果。 LROC额定值表示为LROC曲线下的面积。对于ROC研究,使用了2个恒定Q通道模型,其参数是根据SKE ROC研究中人与CHO性能的先前比较确定的。每个位置和策略将CHO应用于200个噪声实现。过滤策略的CHO等级以ROC曲线下面积在整个位置上的平均值给出。人类和数值观察者之间的相关性通过Spearman等级相关性测试进行量化。等级相关系数为0.857和0.952。作者得出的结论是,可以将具有这些恒定Q CHO的ROC研究用于区分明显的优劣策略,从而减少LROC研究中人类观察者考虑的策略数量。

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