AxonFinder: Automated segmentation of tumor innervating neuronal fibers

Kaoutar Ait-Ahmad, Cigdem Ak, Guillaume Thibault, Young Hwan Chang, Sebnem Ece Eksi
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Abstract

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.
AxonFinder:自动分割肿瘤支配神经元纤维
神经信号传递越来越被认为是癌症进展的关键因素,原发性肿瘤的神经元支配是导致疾病进展的原因之一。本研究的重点是分割前列腺肿瘤微环境中的单个轴突,由于轴突形态不规则,检测和分析它们一直是个难题。我们提出了一种基于深度学习的轴突自动分割新方法--AxonFinder,该方法利用带有 ResNet-101 编码器的 U-Net 模型,基于多路复用成像方法。我们利用低、中、高风险前列腺癌患者的全切片图像数据集,手动标注轴突来训练我们的模型,在检测以前难以分割的轴突结构方面取得了显著的准确性。我们的分析包括对不同CAPRA-S前列腺癌风险类别的轴突密度和形态特征的全面评估,为了解肿瘤神经支配与癌症进展之间的相关性提供了见解。我们的论文表明了神经元标记物在前列腺癌预后评估中的潜在作用,有助于病理学家评估肿瘤切片,并加深我们对肿瘤微环境中神经信号转导的理解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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