肝脏肿瘤图像增强及CDK1基因突变预测方法

Yang Zhou, Huiyan Jiang, Yan Zhang
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引用次数: 0

摘要

肝癌是最常见的恶性肿瘤之一,死亡率极高。基因测序可以揭示肝细胞的遗传变异。CDK1基因具有靶向抗肿瘤的潜力。因此,预测CDK1基因突变对诊断和治疗具有重要意义。本文提出了一种预测CDK1基因突变的新方法。一种新型肿瘤图像增强技术将CT图像转换为低曝光图像、高曝光图像和肿瘤细节增强图像。这些图像分别能有效增强组织间质和坏死区域、肿瘤实质、肿瘤纹理和边缘特征。利用深度神经网络对CDK1基因突变进行预测。采用多策略融合损失函数,解决了样本类别和硬样本的不平衡,提高了预测性能。设计了对比实验来验证所提方法的有效性。增强后的CDK1基因突变预测提高了分类器的准确率,比其他分类器提高了0.2。多策略融合损失函数模型的AUC优于对比损失函数模型的0.116。所提出的增强方法能够提高分类性能。多策略融合损失函数全面提高了分类器的各项指标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Liver Tumor Image Enhancement and CDK1 Gene Mutation Prediction Method
Liver cancer is one of the most common malignancies, which has extremely high mortality rate. Gene sequencing can reveal genetic variants of hepatocytes. The CDK1 gene has the potential to target anti-tumor. Therefore, the prediction of CDK1 gene mutation is of great significance for the diagnosis and treatment. In this paper, a new method for predicting CDK1 gene mutation is proposed. A novel tumor image enhancement converts the CT images into low-exposure images, high-exposure images and tumor detail-enhanced images. These images are effective to enhance interstitial and necrotic area, tumor parenchyma, tumor texture and edge features, respectively. CDK1 gene mutation prediction is modeled with deep neural network. A multi-strategy fusion loss function, which solves the imbalance of sample categories and hard samples, is used to improve the prediction performance. Comparative experiments are designed to verify the effectiveness of the proposed methods. The CDK1 gene mutation prediction after enhancement improves the accuracy of the classifier, which was 0.2 higher than others. The model with multi-strategy fusion loss function outperformed 0.116 in AUC than compared loss function. The proposed enhancement method is capable to improve the performance of classification. The multi-strategy fusion loss function comprehensively improves the indicators of the classifier.
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