4.7 Article

Estimating CT Image From MRI Data Using Structured Random Forest and Auto-Context Model

Journal

IEEE TRANSACTIONS ON MEDICAL IMAGING
Volume 35, Issue 1, Pages 174-183

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TMI.2015.2461533

Keywords

Auto-context; CT prediction; dose planning; PET attenuation correction; random forest

Funding

  1. Alzheimer's Disease Neuroimaging Initiative (ADNI) (National Institutes of Health) [U01 AG024904]
  2. DOD ADNI (Department of Defense) [W81XWH-12-2-0012]
  3. NIH [EB006733, EB008374, EB009634, MH100217, AG041721, AG042599, CA140413]
  4. NATIONAL CANCER INSTITUTE [R01CA140413] Funding Source: NIH RePORTER
  5. NATIONAL INSTITUTE OF BIOMEDICAL IMAGING AND BIOENGINEERING [R01EB008374, R01EB009634, R01EB006733] Funding Source: NIH RePORTER
  6. NATIONAL INSTITUTE OF MENTAL HEALTH [R01MH100217] Funding Source: NIH RePORTER
  7. NATIONAL INSTITUTE ON AGING [R01AG042599, R01AG041721, U01AG024904] Funding Source: NIH RePORTER

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Computed tomography (CT) imaging is an essential tool in various clinical diagnoses and radiotherapy treatment planning. Since CT image intensities are directly related to positron emission tomography (PET) attenuation coefficients, they are indispensable for attenuation correction (AC) of the PET images. However, due to the relatively high dose of radiation exposure in CT scan, it is advised to limit the acquisition of CT images. In addition, in the new PET and magnetic resonance (MR) imaging scanner, only MR images are available, which are unfortunately not directly applicable to AC. These issues greatly motivate the development of methods for reliable estimate of CT image from its corresponding MR image of the same subject. In this paper, we propose a learning-based method to tackle this challenging problem. Specifically, we first partition a given MR image into a set of patches. Then, for each patch, we use the structured random forest to directly predict a CT patch as a structured output, where a new ensemble model is also used to ensure the robust prediction. Image features are innovatively crafted to achieve multi-level sensitivity, with spatial information integrated through only rigid-body alignment to help avoiding the error-prone inter-subject deformable registration. Moreover, we use an auto-context model to iteratively refine the prediction. Finally, we combine all of the predicted CT patches to obtain the final prediction for the given MR image. We demonstrate the efficacy of our method on two datasets: human brain and prostate images. Experimental results show that our method can accurately predict CT images in various scenarios, even for the images undergoing large shape variation, and also outperforms two state-of-the-art methods.

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