4.6 Article

Prediction of Prostate Cancer Disease Aggressiveness Using Bi-Parametric Mri Radiomics

Journal

CANCERS
Volume 13, Issue 23, Pages -

Publisher

MDPI
DOI: 10.3390/cancers13236065

Keywords

radiomics; prostate cancer; machine learning; bi-parametric MRI

Categories

Funding

  1. European Union [952159]
  2. FCT through project DeST: Deep Semantic Tagger project [PTDC/CCI-BIO/28685/2017]
  3. FCT through LASIGE Research Unit [UIDB/00408/2020, UIDP/00408/2020]

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The study found that features extracted from the whole prostate gland were more stable and produced better models, suggesting that the areas surrounding the tumour lesions offer relevant information regarding the Gleason Score.
Simple Summary The use of radiomics has been studied to predict Gleason Score from bi-parametric prostate MRI examinations. However, different combinations of type of input data (whole prostate gland/lesion features), sampling strategy, feature selection method and machine learning algorithm can be used. The impact of such choices was investigated and it was found that features extracted from the whole prostate gland were more stable to segmentation differences and produced better models (higher performance and less overfitting). This result suggests that the areas surrounding the tumour lesions offer relevant information regarding the Gleason Score that is ultimately attributed to that lesion. Prostate cancer is one of the most prevalent cancers in the male population. Its diagnosis and classification rely on unspecific measures such as PSA levels and DRE, followed by biopsy, where an aggressiveness level is assigned in the form of Gleason Score. Efforts have been made in the past to use radiomics coupled with machine learning to predict prostate cancer aggressiveness from clinical images, showing promising results. Thus, the main goal of this work was to develop supervised machine learning models exploiting radiomic features extracted from bpMRI examinations, to predict biological aggressiveness; 288 classifiers were developed, corresponding to different combinations of pipeline aspects, namely, type of input data, sampling strategy, feature selection method and machine learning algorithm. On a cohort of 281 lesions from 183 patients, it was found that (1) radiomic features extracted from the lesion volume of interest were less stable to segmentation than the equivalent extraction from the whole gland volume of interest; and (2) radiomic features extracted from the whole gland volume of interest produced higher performance and less overfitted classifiers than radiomic features extracted from the lesions volumes of interest. This result suggests that the areas surrounding the tumour lesions offer relevant information regarding the Gleason Score that is ultimately attributed to that lesion.

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