Paper
23 March 2016 The role of imaging based prostate biopsy morphology in a data fusion paradigm for transducing prognostic predictions
Faisal M. Khan, Casimir A. Kulikowski
Author Affiliations +
Abstract
A major focus area for precision medicine is in managing the treatment of newly diagnosed prostate cancer patients. For patients with a positive biopsy, clinicians aim to develop an individualized treatment plan based on a mechanistic understanding of the disease factors unique to each patient. Recently, there has been a movement towards a multi-modal view of the cancer through the fusion of quantitative information from multiple sources, imaging and otherwise. Simultaneously, there have been significant advances in machine learning methods for medical prognostics which integrate a multitude of predictive factors to develop an individualized risk assessment and prognosis for patients. An emerging area of research is in semi-supervised approaches which transduce the appropriate survival time for censored patients. In this work, we apply a novel semi-supervised approach for support vector regression to predict the prognosis for newly diagnosed prostate cancer patients. We integrate clinical characteristics of a patient’s disease with imaging derived metrics for biomarker expression as well as glandular and nuclear morphology. In particular, our goal was to explore the performance of nuclear and glandular architecture within the transduction algorithm and assess their predictive power when compared with the Gleason score manually assigned by a pathologist. Our analysis in a multi-institutional cohort of 1027 patients indicates that not only do glandular and morphometric characteristics improve the predictive power of the semi-supervised transduction algorithm; they perform better when the pathological Gleason is absent. This work represents one of the first assessments of quantitative prostate biopsy architecture versus the Gleason grade in the context of a data fusion paradigm which leverages a semi-supervised approach for risk prognosis.
© (2016) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Faisal M. Khan and Casimir A. Kulikowski "The role of imaging based prostate biopsy morphology in a data fusion paradigm for transducing prognostic predictions", Proc. SPIE 9791, Medical Imaging 2016: Digital Pathology, 979119 (23 March 2016); https://doi.org/10.1117/12.2216435
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KEYWORDS
Prostate

Tissues

Biopsy

Autoregressive models

Prostate cancer

Data fusion

Biological research

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