LECANDUS study (LEsion CANdidate Detection in UltraSound Data): evaluation of image analysis algorithms for breast lesion detection in volume ultrasound data

  • Michael Golatta
  • Désirée Zeegers
  • Konstantinos Filippatos
  • Leah-Larissa Binder
  • Alexander Scharf
  • Geraldine Rauch
  • Joachim Rom
  • Florian Schütz
  • Christof Sohn
  • Joerg Heil

Abstract

PURPOSE:

This study aims at developing and evaluating a prototype of a lesion candidate detection algorithm for a 3D-US computer-aided diagnosis (CAD) system.

METHODS:

Additionally, to routine imaging, automated breast volume scans (ABVS) were performed on 63 patients. All ABVS exams were analyzed and annotated before the evaluation with different algorithm blob detectors characterized by different blob-radiuses, voxel-sizes and the quantiles of blob filter responses to find lesion candidates. Lesions found in candidates were compared to the prior annotations.

RESULTS:

All histologically proven lesions were detected with at least one algorithm. The algorithm with optimal sensitivity detected all cancers (sensitivity = 100 %) with a very low positive predictive value due to a high false-positive rate.

CONCLUSIONS:

ABVS is a new technology which can be analyzed by a CAD software. Using different algorithms, lesions can be detected with a very high and accurate sensitivity. Further research for feature extraction and lesion classification is needed aiming at reducing the false-positive hits.

Bibliografische Daten

OriginalspracheEnglisch
ISSN0932-0067
DOIs
StatusVeröffentlicht - 08.2016
Extern publiziertJa
PubMed 27236704