Chanrim Park, Seo Young Park, Hwa Jung Kim, Hee Jung Shin
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引用次数: 0
Abstract
Evaluating the performance of a binary diagnostic test, including artificial intelligence classification algorithms, involves measuring sensitivity, specificity, positive predictive value, and negative predictive value. Particularly when comparing the performance of two diagnostic tests applied on the same set of patients, these metrics are crucial for identifying the more accurate test. However, comparing predictive values presents statistical challenges because their denominators depend on the test outcomes, unlike the comparison of sensitivities and specificities. This paper reviews existing methods for comparing predictive values and proposes using the permutation test. The permutation test is an intuitive, non-parametric method suitable for datasets with small sample sizes. We demonstrate each method using a dataset from MRI and combined modality of mammography and ultrasound in diagnosing breast cancer.
评估二元诊断测试(包括人工智能分类算法)的性能需要测量灵敏度、特异性、阳性预测值和阴性预测值。特别是在比较应用于同一组患者的两种诊断测试的性能时,这些指标对于确定更准确的测试至关重要。然而,与灵敏度和特异度的比较不同,预测值的分母取决于检验结果,因此比较预测值在统计学上存在挑战。本文回顾了比较预测值的现有方法,并建议使用置换检验。置换检验是一种直观的非参数方法,适用于样本量较小的数据集。我们使用磁共振成像数据集和乳房 X 线照相术与超声波诊断乳腺癌的组合模式演示了每种方法。
期刊介绍:
The inaugural issue of the Korean J Radiol came out in March 2000. Our journal aims to produce and propagate knowledge on radiologic imaging and related sciences.
A unique feature of the articles published in the Journal will be their reflection of global trends in radiology combined with an East-Asian perspective. Geographic differences in disease prevalence will be reflected in the contents of papers, and this will serve to enrich our body of knowledge.
World''s outstanding radiologists from many countries are serving as editorial board of our journal.