The potential for machine learning algorithms to improve and reduce the cost of 3-dimensional printing for surgical planning.

Journal: Expert review of medical devices
PMID:

Abstract

INTRODUCTION: 3D-printed anatomical models play an important role in medical and research settings. The recent successes of 3D anatomical models in healthcare have led many institutions to adopt the technology. However, there remain several issues that must be addressed before it can become more wide-spread. Of importance are the problems of cost and time of manufacturing. Machine learning (ML) could be utilized to solve these issues by streamlining the 3D modeling process through rapid medical image segmentation and improved patient selection and image acquisition. The current challenges, potential solutions, and future directions for ML and 3D anatomical modeling in healthcare are discussed.

Authors

  • Trevor J Huff
    a Creighton University School of Medicine , Omaha , USA.
  • Parker E Ludwig
    a Creighton University School of Medicine , Omaha , USA.
  • Jorge M Zuniga
    b Department of Biomechanics , University of Nebraska at Omaha , USA.