AI Article Synopsis

  • Radiomics applied in MRI shows promise for classifying prostate cancer lesions, but existing studies often lack external validation, raising concerns about model reliability on unseen data.
  • This study aimed to test the generalizability of these radiomics models across multiple centers and to compare their diagnostic performance against expert radiologists.
  • Results indicated that while single-center models performed well, their accuracy dropped significantly with external data; however, in a multi-center setting, the radiomics model outperformed radiologists, suggesting it could be a more reliable tool for predicting cancer malignancy.

Article Abstract

Radiomics applied in MRI has shown promising results in classifying prostate cancer lesions. However, many papers describe single-center studies without external validation. The issues of using radiomics models on unseen data have not yet been sufficiently addressed. The aim of this study is to evaluate the generalizability of radiomics models for prostate cancer classification and to compare the performance of these models to the performance of radiologists. Multiparametric MRI, photographs and histology of radical prostatectomy specimens, and pathology reports of 107 patients were obtained from three healthcare centers in the Netherlands. By spatially correlating the MRI with histology, 204 lesions were identified. For each lesion, radiomics features were extracted from the MRI data. Radiomics models for discriminating high-grade (Gleason score ≥ 7) versus low-grade lesions were automatically generated using open-source machine learning software. The performance was tested both in a single-center setting through cross-validation and in a multi-center setting using the two unseen datasets as external validation. For comparison with clinical practice, a multi-center classifier was tested and compared with the Prostate Imaging Reporting and Data System version 2 (PIRADS v2) scoring performed by two expert radiologists. The three single-center models obtained a mean AUC of 0.75, which decreased to 0.54 when the model was applied to the external data, the radiologists obtained a mean AUC of 0.46. In the multi-center setting, the radiomics model obtained a mean AUC of 0.75 while the radiologists obtained a mean AUC of 0.47 on the same subset. While radiomics models have a decent performance when tested on data from the same center(s), they may show a significant drop in performance when applied to external data. On a multi-center dataset our radiomics model outperformed the radiologists, and thus, may represent a more accurate alternative for malignancy prediction.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC7926758PMC
http://dx.doi.org/10.3390/diagnostics11020369DOI Listing

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