利用多层次 Bi-LSTM 识别和定位不稳定型和侵袭性前列腺癌

Afnan M Alhassan
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引用次数: 0

摘要

鉴别轻度和侵袭性前列腺癌是优化治疗的关键问题。现有的前列腺癌检测方法面临着挑战,因为这些技术依赖于准确性有限的地面实况标签和组织学相似性,没有考虑到疾病的病理特征,而且癌组织和健康组织在外观上的不确定差异会导致许多假阳性和假阴性解释。因此,这项研究引入了一个综合框架,旨在实现对前列腺癌的准确识别和定位,无论其侵袭性如何。这是通过利用复杂的多层次双向长短期记忆(Bi-LSTM)模型来实现的。预处理后的图像将进行基于多级特征图的 U-Net 分割,并通过 ResNet-101 和基于通道的注意力模块来提高性能。随后,对分割后的图像进行特征提取,包括各种特征类型,包括统计特征、基于全局混合的特征图和可提高检测精度的 ResNet-101 特征图。提取的特征被送入多级 Bi-LSTM 模型,并通过通道和空间注意机制进一步优化,从而对癌症的复杂结构进行有效定位和识别。此外,该框架还是一种很有前途的方法,可用于加强前列腺癌的诊断和定位,包括轻度和侵袭性病例。数据集 1 的准确率、灵敏度和特异性分别为 96.72%、96.17% 和 96.17%。对于数据集 2,该模型的准确率、灵敏度和特异性分别达到了 94.41%、93.10% 和 94.96%。这些结果超过了其他方法的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Identification and Localization of Indolent and Aggressive Prostate Cancers Using Multilevel Bi-LSTM.

Identification and Localization of Indolent and Aggressive Prostate Cancers Using Multilevel Bi-LSTM.

Identifying indolent and aggressive prostate cancers is a critical problem for optimal treatment. The existing approaches of prostate cancer detection are facing challenges as the techniques rely on ground truth labels with limited accuracy, and histological similarity, and do not consider the disease pathology characteristics, and indefinite differences in appearance between the cancerous and healthy tissue lead to many false positive and false negative interpretations. Hence, this research introduces a comprehensive framework designed to achieve accurate identification and localization of prostate cancers, irrespective of their aggressiveness. This is accomplished through the utilization of a sophisticated multilevel bidirectional long short-term memory (Bi-LSTM) model. The pre-processed images are subjected to multilevel feature map-based U-Net segmentation, bolstered by ResNet-101 and a channel-based attention module that improves the performance. Subsequently, segmented images undergo feature extraction, encompassing various feature types, including statistical features, a global hybrid-based feature map, and a ResNet-101 feature map that enhances the detection accuracy. The extracted features are fed to the multilevel Bi-LSTM model, further optimized through channel and spatial attention mechanisms that offer the effective localization and recognition of complex structures of cancer. Further, the framework represents a promising approach for enhancing the diagnosis and localization of prostate cancers, encompassing both indolent and aggressive cases. Rigorous testing on a distinct dataset demonstrates the model's effectiveness, with performance evaluated through key metrics which are reported as 96.72%, 96.17%, and 96.17% for accuracy, sensitivity, and specificity respectively utilizing the dataset 1. For dataset 2, the model achieves the accuracy, sensitivity, and specificity values of 94.41%, 93.10%, and 94.96% respectively. These results surpass the efficiency of alternative methods.

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