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计算机辅助检测胸部 X 线片中的小肺结节:一项观察者研究。

Computer-aided detection of small pulmonary nodules in chest radiographs: an observer study.

机构信息

Department of Radiology, Academic Medical Centre, Meibergdreef 9, 1105 AZ Amsterdam, the Netherlands.

出版信息

Acad Radiol. 2011 Dec;18(12):1507-14. doi: 10.1016/j.acra.2011.08.008. Epub 2011 Oct 2.

DOI:10.1016/j.acra.2011.08.008
PMID:21963532
Abstract

RATIONALE AND OBJECTIVES

To evaluate the impact of computer-aided detection (CAD, IQQA-Chest; EDDA Technology, Princeton Junction, NJ) used as second reader on the detection of small pulmonary nodules in chest radiography (CXR).

MATERIALS AND METHODS

A total of 113 patients (mean age 62 years) with CT and CXR within 6 weeks were selected. Fifty-nine patients showed 101 pulmonary nodules (diameter 5-15mm); the remaining 54 patients served as negative controls. Six readers of varying experience individually evaluated the CXR without and with CAD as second reader in two separate reading sessions. The sensitivity per lesion, figure of merit (FOM), and mean false positive per image (mFP) were calculated. Institutional review board approval was waived.

RESULTS

With CAD, the sensitivity increased for inexperienced readers (39% vs. 45%, P < .05) and remained unchanged for experienced readers (50% vs. 51%). The mFP nonsignificantly increased for both inexperienced and experienced readers (0.27 vs. 0.34 and 0.16 vs. 0.21). The mean FOM did not significantly differ for readings without and with CAD irrespective of reader experience (0.71 vs. 0.71 and 0.84 vs. 0.87). All readers together dismissed 33% of true-positive CAD candidates. False-positive candidates by CAD provoked 40% of all false-positive marks made by the readers.

CONCLUSION

CAD improves the sensitivity of inexperienced readers for the detection of small nodules at the expense of loss of specificity. Overall performance by means of FOM was therefore not affected. To use CAD more beneficial, readers need to improve their ability to differentiate true from false-positive CAD candidates.

摘要

背景与目的

评估计算机辅助检测(CAD,IQQA-Chest;EDDA 技术,普林斯顿 junction,NJ)作为第二读片者对胸部 X 线摄影(CXR)中小肺结节检测的影响。

材料与方法

共选择了 113 例 CT 和 CXR 在 6 周内的患者(平均年龄 62 岁)。59 例患者有 101 个肺结节(直径 5-15mm);其余 54 例患者作为阴性对照。6 名经验不同的读者分别在两次独立的阅读会议中评估了无 CAD 和有 CAD 作为第二读片者的 CXR。计算了每个病变的灵敏度、性能系数(FOM)和每张图像的平均假阳性率(mFP)。机构审查委员会的批准被豁免。

结果

使用 CAD 后,不熟练读者的灵敏度增加(39%对 45%,P <.05),熟练读者的灵敏度保持不变(50%对 51%)。不熟练和熟练读者的 mFP 均略有增加(0.27 对 0.34 和 0.16 对 0.21)。无论读者经验如何,无 CAD 和有 CAD 阅读的平均 FOM 均无显著差异(0.71 对 0.71 和 0.84 对 0.87)。所有读者共同排除了 33%的 CAD 阳性候选者。CAD 引起的假阳性候选者占所有读者假阳性标记的 40%。

结论

CAD 以特异性为代价提高了不熟练读者对小结节的检测灵敏度。因此,FOM 的整体性能未受影响。为了更有益地使用 CAD,读者需要提高区分真阳性和假阳性 CAD 候选者的能力。

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