Academic Radiology
Volume 14, Issue 5 , Pages 579-593, May 2007

Automated Detection of Small Pulmonary Nodules in Whole Lung CT Scans

  • Andinet A. Enquobahrie, MS

      Affiliations

    • School of Electrical and Computer Engineering, Rhodes Hall, Cornell University, Ithaca, NY 14850
    • Corresponding Author InformationAddress correspondence to A.A.E.
  • ,
  • Anthony P. Reeves, PhD

      Affiliations

    • School of Electrical and Computer Engineering, Rhodes Hall, Cornell University, Ithaca, NY 14850
  • ,
  • David F. Yankelevitz, MD

      Affiliations

    • Department of Radiology, Room J-030, Weill Medical College of Cornell University, 525 East 68th Street, New York, NY 10021.
  • ,
  • Claudia I. Henschke, PhD, MD

      Affiliations

    • Department of Radiology, Room J-030, Weill Medical College of Cornell University, 525 East 68th Street, New York, NY 10021.

Received 3 December 2006; accepted 1 January 2007.

Rationale and Objectives

The objective of this work was to develop and evaluate a robust algorithm that automatically detects small solid pulmonary nodules in whole lung helical CT scans from a lung cancer screening study.

Materials and Methods

We developed a three-stage detection algorithm for both isolated and attached nodules. The algorithm consisted of nodule search space demarcation, nodule candidates’ generation, and a sequential elimination of false positives. Isolated nodules are nodules that are surrounded by lung parenchyma, whereas attached nodules are connected to large, dense structures such as pleural and/or mediastinal surface. Two large well-documented whole lung CT scan databases (Databases A and B) were created to train and test the detection algorithm. Database A contains 250 sequentially selected scans with 2.5-mm slice thickness that were obtained at Weill Medical College of Cornell University. With equipment upgrade at this college, a second database, Database B, was created containing 250 scans with a 1.25-mm slice thickness. A total of 395 and 482 nodules were identified in Databases A and B, respectively. In both databases, the majority of the nodules were isolated, comprising 72.1% and 82.3% of nodules in Databases A and B, respectively.

Results

The detection algorithm was trained and tested on both Databases A and B. For isolated nodules with sizes 4 mm or larger, the algorithm achieved 94.0% sensitivity and 7.1 false positives per case (FPPC) for Database A (2.5 mm). Similarly, the algorithm achieved 91% sensitivity and 6.9 FPPC for Database B (1.25 mm). The algorithm achieved 92% sensitivity with 17.4 FPPC and 89% sensitivity with 5.5 FFPC for attached nodules with sizes 3 mm or larger in the Database A (2.5 mm) and Database B (1.25 mm), respectively.

Conclusion

The developed algorithm achieved practical performance for automated detection of both isolated and the more challenging attached nodules. The automated system will be a useful tool to assist radiologists in identifying nodules from whole lung CT scans in a clinical setting.

Key words: CT, pulmonary nodules, compute-aided detection (CAD), segmentation, classification, lung cancer screening

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PII: S1076-6332(07)00071-2

doi:10.1016/j.acra.2007.01.029

Academic Radiology
Volume 14, Issue 5 , Pages 579-593, May 2007