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      MAPS: A Quantitative Radiomics Approach for Prostate Cancer Detection

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          Abstract

          This paper presents a quantitative radiomics feature model for performing prostate cancer detection using multiparametric MRI (mpMRI). It incorporates a novel tumor candidate identification algorithm to efficiently and thoroughly identify the regions of concern and constructs a comprehensive radiomics feature model to detect tumorous regions. In contrast to conventional automated classification schemes, this radiomics-based feature model aims to ground its decisions in a way that can be interpreted and understood by the diagnostician. This is done by grouping features into high-level feature categories which are already used by radiologists to diagnose prostate cancer: Morphology, Asymmetry, Physiology, and Size (MAPS), using biomarkers inspired by the PI-RADS guidelines for performing structured reporting on prostate MRI. Clinical mpMRI data were collected from 13 men with histology-confirmed prostate cancer and labeled by an experienced radiologist. These annotated data were used to train classifiers using the proposed radiomics-driven feature model in order to evaluate the classification performance. The preliminary experimental results indicated that the proposed model outperformed each of its constituent feature groups as well as a comparable conventional mpMRI feature model. A further validation of the proposed algorithm will be conducted using a larger dataset as future work.

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          Author and article information

          Journal
          IEEE Transactions on Biomedical Engineering
          IEEE Trans. Biomed. Eng.
          Institute of Electrical and Electronics Engineers (IEEE)
          0018-9294
          1558-2531
          June 2016
          June 2016
          : 63
          : 6
          : 1145-1156
          Article
          10.1109/TBME.2015.2485779
          26441442
          df7821f9-f020-4a89-ac11-31c9f1ac75fb
          © 2016
          History

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