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Computer-aided detection of lung cancer on chest radiographs: effect on observer performance.

机译:胸部X光片上计算机辅助检测肺癌:对观察者表现的影响。

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PURPOSE: To assess how computer-aided detection (CAD) affects reader performance in detecting early lung cancer on chest radiographs. MATERIALS AND METHODS: In this ethics committee-approved study, 46 individuals with 49 computed tomographically (CT)-detected and histologically proved lung cancers and 65 patients without nodules at CT were retrospectively included. All subjects participated in a lung cancer screening trial. Chest radiographs were obtained within 2 months after screening CT. Four radiology residents and two experienced radiologists were asked to identify and localize potential cancers on the chest radiographs, first without and subsequently with the use of CAD software. A figure of merit was calculated by using free-response receiver operating characteristic analysis. RESULTS: Tumor diameter ranged from 5.1 to 50.7 mm (median, 11.8 mm). Fifty-one percent (22 of 49) of lesions were subtle and detected by two or fewer readers. Stand-alone CAD sensitivity was 61%, with an average of 2.4 false-positive annotations per chest radiograph. Average sensitivity was 63% for radiologists at 0.23 false-positive annotations per chest radiograph and 49% for residents at 0.45 false-positive annotations per chest radiograph. Figure of merit did not change significantly for any of the observers after using CAD. CAD marked between five and 16 cancers that were initially missed by the readers. These correctly CAD-depicted lesions were rejected by radiologists in 92% of cases and by residents in 77% of cases. CONCLUSION: The sensitivity of CAD in identifying lung cancers depicted with CT screening was similar to that of experienced radiologists. However, CAD did not improve cancer detection because, especially for subtle lesions, observers were unable to sufficiently differentiate true-positive from false-positive annotations.
机译:目的:评估计算机辅助检测(CAD)如何影响阅读器在胸部X光片上检测早期肺癌的表现。材料与方法:在这项获得伦理委员会批准的研究中,回顾性纳入了46例患者,其中包括49例经计算机X线断层摄影(CT)检测并经组织学证实的肺癌,以及65例CT上无结节的患者。所有受试者都参加了肺癌筛查试验。筛查CT后2个月内获得胸部X光片。要求四名放射科住院医师和两名经验丰富的放射科医生在不使用CAD软件的情况下,然后使用CAD软件在胸部X光片上识别和定位潜在的癌症。通过使用自由响应接收器工作特性分析来计算品质因数。结果:肿瘤直径范围为5.1至50.7毫米(中位数为11.8毫米)。 52%的病变占百分之五十一,被两个或更少的读者发现。独立的CAD敏感性为61%,每张胸部X光片平均有2.4个假阳性注释。放射科医生的平均敏感性为63%,每个胸部X射线照片为0.23假阳性注释,而居民的平均敏感性为49%,每个胸部X射线照片为0.45假阳性注释。使用CAD后,任何观察者的品质因数均未发生明显变化。 CAD标记了最初被读者遗漏的5至16种癌症。这些正确描述了CAD的病变在92%的病例中被放射科医生拒绝,在77%的病例中被居民拒绝。结论:CAD筛查所描述的肺癌识别CAD的敏感性与经验丰富的放射科医生相似。但是,CAD不能改善癌症的检测,因为,尤其是对于细微的病变,观察者无法充分地区分真阳性注释与假阳性注释。

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