AI Article Synopsis

  • Prostate cancer has a high survival rate with timely detection, and computational methods can speed up this process.
  • Many current machine-learning methods rely on precise segmentation of the prostate gland and lesions, but manual segmentation is slow and varies between observers.
  • The study utilizes the extensive ProstateNet dataset and other public datasets to develop robust semi-automatic segmentation models, which outperform those trained on smaller, homogenous datasets and can also be useful for lesion detection.

Article Abstract

Despite being one of the most prevalent forms of cancer, prostate cancer (PCa) shows a significantly high survival rate, provided there is timely detection and treatment. Computational methods can help make this detection process considerably faster and more robust. However, some modern machine-learning approaches require accurate segmentation of the prostate gland and the index lesion. Since performing manual segmentations is a very time-consuming task, and highly prone to inter-observer variability, there is a need to develop robust semi-automatic segmentation models. In this work, we leverage the large and highly diverse ProstateNet dataset, which includes 638 whole gland and 461 lesion segmentation masks, from 3 different scanner manufacturers provided by 14 institutions, in addition to other 3 independent public datasets, to train accurate and robust segmentation models for the whole prostate gland, zones and lesions. We show that models trained on large amounts of diverse data are better at generalizing to data from other institutions and obtained with other manufacturers, outperforming models trained on single-institution single-manufacturer datasets in all segmentation tasks. Furthermore, we show that lesion segmentation models trained on ProstateNet can be reliably used as lesion detection models.

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http://dx.doi.org/10.1016/j.compbiomed.2024.108216DOI Listing

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