• DocumentCode
    42021
  • Title

    A Novel Multiple-Instance Learning-Based Approach to Computer-Aided Detection of Tuberculosis on Chest X-Rays

  • Author

    Melendez, Jaime ; van Ginneken, Bram ; Maduskar, Pragnya ; Philipsen, Rick H. H. M. ; Reither, Klaus ; Breuninger, Marianne ; Adetifa, Ifedayo M. O. ; Maane, Rahmatulai ; Ayles, Helen ; Sanchez, Clara I.

  • Author_Institution
    Dept. of Radiol. & Nucl. Med., Radboud Univ., Nijmegen, Netherlands
  • Volume
    34
  • Issue
    1
  • fYear
    2015
  • fDate
    Jan. 2015
  • Firstpage
    179
  • Lastpage
    192
  • Abstract
    To reach performance levels comparable to human experts, computer-aided detection (CAD) systems are typically optimized following a supervised learning approach that relies on large training databases comprising manually annotated lesions. However, manually outlining those lesions constitutes a difficult and time-consuming process that renders detailedly annotated data difficult to obtain. In this paper, we investigate an alternative approach, namely multiple-instance learning (MIL), that does not require detailed information for optimization. We have applied MIL to a CAD system for tuberculosis detection. Only the case condition (normal or abnormal) was required during training. Based upon the well-known miSVM technique, we propose an improved algorithm that overcomes miSVM´s drawbacks related to positive instance underestimation and costly iteration. To show the advantages of our MIL-based approach as compared with a traditional supervised one, experiments with three X-ray databases were conducted. The area under the receiver operating characteristic curve was utilized as a performance measure. With the first database, for which training lesion annotations were available, our MIL-based method was comparable to the supervised system (0.86 versus 0.88). When evaluating the remaining databases, given their large difference with the previous image set, the most appealing strategy was to retrain the CAD systems. However, since only the case condition was available, only the MIL-based system could be retrained. This scenario, which is common in real-world applications, demonstrates the better adaptation capabilities of the proposed approach. After retraining, our MIL-based system significantly outperformed the supervised one (0.86 versus 0.79 and 0.91 versus 0.85, p<;0.0001 and p=0.0002, respectively).
  • Keywords
    diagnostic radiography; diseases; learning (artificial intelligence); lung; medical image processing; optimisation; sensitivity analysis; support vector machines; CAD system; MIL-based approach; X-ray databases; chest X-rays; computer-aided detection; human experts; image set; manually annotated lesions; miSVM technique; multiple-instance learning; novel multiple-instance learning-based approach; optimization; performance levels; positive instance underestimation; real-world applications; receiver operating characteristic curve; supervised learning approach; supervised system; time-consuming process; training databases; training lesion annotations; tuberculosis detection; Databases; Design automation; Lesions; Lungs; Support vector machines; Training; Vectors; Chest radiography; computer-aided detection (CAD); multiple-instance learning (MIL); tuberculosis;
  • fLanguage
    English
  • Journal_Title
    Medical Imaging, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    0278-0062
  • Type

    jour

  • DOI
    10.1109/TMI.2014.2350539
  • Filename
    6882215