AxonFinder: Automated segmentation of tumor innervating neuronal fibers.
Kaoutar Ait-AhmadCigdem AkGuillaume ThibaultYoung Hwan ChangSebnem Ece EksiPublished in: bioRxiv : the preprint server for biology (2024)
Neurosignaling is increasingly recognized as a critical factor in cancer progression, where neuronal innervation of primary tumors contributes to the disease's advancement. This study focuses on segmenting individual axons within the prostate tumor microenvironment, which have been challenging to detect and analyze due to their irregular morphologies. We present a novel deep learning-based approach for the automated segmentation of axons, AxonFinder, leveraging a U-Net model with a ResNet-101 encoder, based on a multiplexed imaging approach. Utilizing a dataset of whole-slide images from low-, intermediate-, and high-risk prostate cancer patients, we manually annotated axons to train our model, achieving significant accuracy in detecting axonal structures that were previously hard to segment. Our analysis includes a comprehensive assessment of axon density and morphological features across different CAPRA-S prostate cancer risk categories, providing insights into the correlation between tumor innervation and cancer progression. Our paper suggests the potential utility of neuronal markers in the prognostic assessment of prostate cancer in aiding the pathologist's assessment of tumor sections and advancing our understanding of neurosignaling in the tumor microenvironment.
Keyphrases
- deep learning
- prostate cancer
- convolutional neural network
- artificial intelligence
- radical prostatectomy
- papillary thyroid
- benign prostatic hyperplasia
- machine learning
- high resolution
- squamous cell
- squamous cell carcinoma
- cerebral ischemia
- spinal cord injury
- high throughput
- blood brain barrier
- mass spectrometry
- subarachnoid hemorrhage
- risk assessment
- human health
- young adults