White Charles S, Flukinger Thomas, Jeudy Jean, Chen Joseph J
Department of Diagnostic Radiology and Nuclear Medicine, University of Maryland School of Medicine, 22 S Greene St, Baltimore, MD 21201, USA.
Radiology. 2009 Jul;252(1):273-81. doi: 10.1148/radiol.2522081319.
To study the ability of a computer-aided detection (CAD) system to detect lung cancer overlooked at initial interpretation by the radiologist.
Institutional review board approval was given for this study. Patient consent was not required; a HIPAA waiver was granted because of the retrospective nature of the data collection. In patients with lung cancer diagnosed from 1995 to 2006 at two institutions, each chest radiograph obtained prior to tumor discovery was evaluated by two radiologists for an overlooked lesion. The size and location of the nodules were documented and graded for subtlety (grades 1-4, 1 = very subtle). Each radiograph with a missed lesion was analyzed by a commercial CAD system, as was the follow-up image at diagnosis. An age- and sex-matched control group was used to assess CAD false-positive rates.
Missed lung cancer was found in 89 patients (age range, 51-86 years; mean age, 65 years; 80 men, nine women) on 114 radiographs. Lesion size ranged from 0.4 to 5.5 cm (mean, 1.8 cm). Lesions were most commonly peripheral (n = 63, 71%) and in upper lobes (n = 67, 75%). Lesion subtlety score was 1, 2, 3, or 4 on 43, 49, 17, and five radiographs, respectively. CAD identified 53 (47%) and 46 (52%) undetected lesions on a per-image and per-patient basis, respectively. The average size of lesions detected with CAD was 1.73 cm compared with 1.85 cm for lesions that were undetected (P = .47). A significant difference (P = .017) was found in the average subtlety score between detected lesions (score, 2.06) and undetected lesions (score, 1.68). An average of 3.9 false-positive results occurred per radiograph; an average of 2.4 false-positive results occurred per radiograph for the control group.
CAD has the potential to detect approximately half of the lesions overlooked by human readers at chest radiography.
研究计算机辅助检测(CAD)系统检测放射科医生在初次解读时遗漏的肺癌的能力。
本研究获得了机构审查委员会的批准。无需患者同意;由于数据收集的回顾性性质,给予了《健康保险流通与责任法案》豁免。在两家机构于1995年至2006年诊断为肺癌的患者中,两位放射科医生对肿瘤发现前获得的每一张胸部X光片进行评估,以寻找遗漏的病变。记录结节的大小和位置,并对其细微程度进行分级(1 - 4级,1 = 非常细微)。对每一张有漏诊病变的X光片以及诊断时的随访影像,均使用商用CAD系统进行分析。使用年龄和性别匹配的对照组来评估CAD的假阳性率。
在114张X光片上发现89例患者(年龄范围51 - 86岁;平均年龄65岁;80名男性,9名女性)存在漏诊的肺癌。病变大小范围为0.4至5.5厘米(平均1.8厘米)。病变最常见于外周(n = 63,71%)及上叶(n = 67,75%)。在43张、49张、17张和5张X光片上,病变细微程度评分分别为1、2、3或4级。CAD在每张影像及每位患者基础上分别识别出53例(47%)和46例(52%)未被检测到的病变。CAD检测到的病变平均大小为1.73厘米,而未被检测到的病变平均大小为1.85厘米(P = 0.47)。在检测到的病变(评分2.06)与未检测到的病变(评分1.68)的平均细微程度评分之间发现了显著差异(P = 0.017)。每张X光片平均出现3.9例假阳性结果;对照组每张X光片平均出现2.4例假阳性结果。
CAD有潜力检测出胸部X光检查中约一半被人工阅片者遗漏的病变。