4.7 Article

Groupwise Conditional Random Forests for Automatic Shape Classification and Contour Quality Assessment in Radiotherapy Planning

期刊

IEEE TRANSACTIONS ON MEDICAL IMAGING
卷 32, 期 6, 页码 1043-1057

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TMI.2013.2251421

关键词

Data mining; decision forests; machine learning; pattern recognition and classification; radiation therapy; random forests; shape analysis

资金

  1. Ontario Region of the Canadian Breast Cancer Foundation (CBCF)
  2. Ontario Consortium for Adaptive Interventions in Radiation Oncology (OCAIRO)-Ontario Research Fund (ORF)
  3. Collaborative Health Research Projects (CHRP) initiative through the Natural Sciences and Engineering Research Council of Canada (NSERC)
  4. Canadian Institutes of Health Research (CIHR)

向作者/读者索取更多资源

Radiation therapy is used to treat cancer patients around the world. High quality treatment plans maximally radiate the targets while minimally radiating healthy organs at risk. In order to judge plan quality and safety, segmentations of the targets and organs at risk are created, and the amount of radiation that will be delivered to each structure is estimated prior to treatment. If the targets or organs at risk are mislabelled, or the segmentations are of poor quality, the safety of the radiation doses will be erroneously reviewed and an unsafe plan could proceed. We propose a technique to automatically label groups of segmentations of different structures from a radiation therapy plan for the joint purposes of providing quality assurance and data mining. Given one or more segmentations and an associated image we seek to assign medically meaningful labels to each segmentation and report the confidence of that label. Our method uses random forests to learn joint distributions over the training features, and then exploits a set of learned potential group configurations to build a conditional random field (CRF) that ensures the assignment of labels is consistent across the group of segmentations. The CRF is then solved via a constrained assignment problem. We validate our method on 1574 plans, consisting of 17 579 segmentations, demonstrating an overall classification accuracy of 91.58%. Our results also demonstrate the stability of RF with respect to tree depth and the number of splitting variables in large data sets.

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