Deep learning solution for medical image localization and orientation detection.

Journal: Medical image analysis
Published Date:

Abstract

Magnetic Resonance (MR) imaging plays an important role in medical diagnosis and biomedical research. Due to the high in-slice resolution and low through-slice resolution nature of MR imaging, the usefulness of the reconstruction highly depends on the positioning of the slice group. Traditional clinical workflow relies on time-consuming manual adjustment that cannot be easily reproduced. Automation of this task can therefore bring important benefits in terms of accuracy, speed and reproducibility. Current auto-slice-positioning methods rely on automatically detected landmarks to derive the positioning, and previous studies suggest that a large, redundant set of landmarks are required to achieve robust results. However, a costly data curation procedure is needed to generate training labels for those landmarks, and the results can still be highly sensitive to landmark detection errors. More importantly, a set of anatomical landmark locations are not naturally produced during the standard clinical workflow, which makes online learning impossible. To address these limitations, we propose a novel framework for auto-slice-positioning that focuses on localizing the canonical planes within a 3D volume. The proposed framework consists of two major steps. A multi-resolution region proposal network is first used to extract a volume-of-interest, after which a V-net-like segmentation network is applied to segment the orientation planes. Importantly, our algorithm also includes a Performance Measurement Index as an indication of the algorithm's confidence. We evaluate the proposed framework on both knee and shoulder MR scans. Our method outperforms state-of-the-art automatic positioning algorithms in terms of accuracy and robustness.

Authors

  • Yu Zhao
    College of Agriculture, Shanxi Agricultural University, Taigu, Shanxi, China.
  • Ke Zeng
    Siemens Medical Solutions Inc., Malvern, PA, USA.
  • Yiyuan Zhao
    SYNGO division, Siemens Medical Solutions, Malvern 19355, USA. Electronic address: yiyuan.zhao@siemens-healthineers.com.
  • Parmeet Bhatia
    SYNGO division, Siemens Medical Solutions, Malvern 19355, USA. Electronic address: bhatia.parmeet@gmail.com.
  • Mahesh Ranganath
    SYNGO division, Siemens Medical Solutions, Malvern 19355, USA. Electronic address: r.mahesh@siemens-healthineers.com.
  • Muhammed Labeeb Kozhikkavil
    MR division, Siemens Healthcare, Erlangen 91052, Germany. Electronic address: muhammed.labeeb@siemens-healthineers.com.
  • Chen Li
    School of Computer Science and Technology, Xi'an Jiaotong University, Xi'an, Shaanxi, China.
  • Gerardo Hermosillo
    SYNGO division, Siemens Medical Solutions, Malvern 19355, USA. Electronic address: gerardo.hermosillovaladez@siemens-healthineers.com.