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Using a constrained formulation based on probability summation to fit receiver operating characteristic (ROC) curves

机译:使用基于概率求和的约束公式拟合接收器工作特性(ROC)曲线

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Abstract: A constrained ROC formulation from probability summation is proposed for measuring observer performance in detecting abnormal findings on medical images. This assumes the observer's detection or rating decision on each image is determined by a latent variable that characterizes the specific finding (type and location) considered most likely to be a target abnormality. For positive cases, this 'maximum- suspicion' variable is assumed to be either the value for the actual target or for the most suspicious non-target finding, whichever is the greater (more suspicious). Unlike the usual ROC formulation, this constrained formulation guarantees a 'well-behaved' ROC curve that always equals or exceeds chance- level decisions and cannot exhibit an upward 'hook.' Its estimated parameters specify the accuracy for separating positive from negative cases, and they also predict accuracy in locating or identifying the actual abnormal findings. The present maximum-likelihood procedure (runs on PC with Windows 95 or NT) fits this constrained formulation to rating-ROC data using normal distributions with two free parameters. Fits of the conventional and constrained ROC formulations are compared for continuous and discrete-scale ratings of chest films in a variety of detection problems, both for localized lesions (nodules, rib fractures) and for diffuse abnormalities (interstitial disease, infiltrates or pnumothorax). The two fitted ROC curves are nearly identical unless the conventional ROC has an ill behaved 'hook,' below the constrained ROC. !19
机译:摘要:提出了一种基于概率求和的约束ROC公式,用于测量观察者在检测医学图像上异常发现方面的表现。假定观察者对每个图像的检测或评级决定由潜在变量确定,该潜在变量表征被认为最有可能是目标异常的特定发现(类型和位置)。对于阳性病例,此“最大怀疑”变量被假定为实际目标值或最可疑的非目标发现值,以较大者为准(更可疑)。与通常的ROC公式不同,此受约束的公式可确保“行为良好”的ROC曲线始终等于或超过机会水平决策,并且不能表现出向上的“挂钩”。它的估计参数指定了将阳性病例与阴性病例区分开的准确性,并且它们还预测了在查找或识别实际异常发现时的准确性。当前的最大似然过程(在装有Windows 95或NT的PC上运行)使该受约束的公式适合使用带有两个自由参数的正态分布对ROC数据进行评级。比较了传统和受限ROC配方在各种检测问题中对胸片的连续和不连续等级的适应性,包括局部病变(结节,肋骨骨折)和弥漫性异常(间质性疾病,浸润或气胸)。除非常规的ROC在受约束的ROC下方具有不良的“钩子”,否则两条拟合的ROC曲线几乎相同。 !19

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