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基于深度学习的黏液性胃癌全扫描病理图像深度特征与相关基因的关系

Relationship between the deep features of the full-scan pathological map of mucinous gastric carcinoma and related genes based on deep learning.

作者信息

Li Ding, Li Xiaoyuan, Li Shifang, Qi Mengmeng, Sun Xiaowei, Hu Guojie

机构信息

Department of Traditional Chinese Medicine, The Affiliated Hospital of Qingdao University, Qingdao, Shandong, China.

Department of Neurosurgery, The Affiliated Hospital of Qingdao University, Qingdao, Shandong, China.

出版信息

Heliyon. 2023 Mar 9;9(3):e14374. doi: 10.1016/j.heliyon.2023.e14374. eCollection 2023 Mar.

Abstract

BACKGROUND

Long-term differential expression of disease-associated genes is a crucial driver of pathological changes in mucinous gastric carcinoma. Therefore, there should be a correlation between depth features extracted from pathology-based full-scan images using deep learning and disease-associated gene expression. This study tried to provides preliminary evidence that long-term differentially expressed (disease-associated) genes lead to subtle changes in disease pathology by exploring their correlation, and offer a new ideas for precise analysis of pathomics and combined analysis of pathomics and genomics.

METHODS

Full pathological scans, gene sequencing data, and clinical data of patients with mucinous gastric carcinoma were downloaded from TCGA data. The VGG-16 network architecture was used to construct a binary classification model to explore the potential of VGG-16 applications and extract the deep features of the pathology-based full-scan map. Differential gene expression analysis was performed and a protein-protein interaction network was constructed to screen disease-related core genes. Differential, Lasso regression, and extensive correlation analyses were used to screen for valuable deep features. Finally, a correlation analysis was used to determine whether there was a correlation between valuable deep features and disease-related core genes.

RESULT

The accuracy of the binary classification model was 0.775 ± 0.129. A total of 24 disease-related core genes were screened, including , and In addition, differential, Lasso regression, and extensive correlation analyses were used to screen eight valuable deep features, including features 51, 106, 109, 118, 257, 282, 326, and 487. Finally, the results of the correlation analysis suggested that valuable deep features were either positively or negatively correlated with core gene expression.

CONCLUSION

The preliminary results of this study support our hypotheses. Deep learning may be an important bridge for the joint analysis of pathomics and genomics and provides preliminary evidence for long-term abnormal expression of genes leading to subtle changes in pathology.

摘要

背景

疾病相关基因的长期差异表达是黏液性胃癌病理变化的关键驱动因素。因此,利用深度学习从基于病理学的全扫描图像中提取的深度特征与疾病相关基因表达之间应该存在相关性。本研究试图通过探索它们之间的相关性,为长期差异表达(疾病相关)基因导致疾病病理的细微变化提供初步证据,并为病理组学的精确分析以及病理组学与基因组学的联合分析提供新思路。

方法

从TCGA数据下载黏液性胃癌患者的全病理扫描、基因测序数据和临床数据。使用VGG-16网络架构构建二元分类模型,以探索VGG-16应用的潜力并提取基于病理学的全扫描图的深度特征。进行差异基因表达分析并构建蛋白质-蛋白质相互作用网络以筛选疾病相关核心基因。使用差异分析、套索回归和广泛的相关性分析来筛选有价值的深度特征。最后,使用相关性分析来确定有价值的深度特征与疾病相关核心基因之间是否存在相关性。

结果

二元分类模型的准确率为0.775±0.129。共筛选出24个疾病相关核心基因,包括 ,以及 此外,使用差异分析、套索回归和广泛的相关性分析筛选出8个有价值的深度特征,包括特征51、106、109、118、257、282、326和487。最后,相关性分析结果表明,有价值的深度特征与核心基因表达呈正相关或负相关。

结论

本研究的初步结果支持我们的假设。深度学习可能是病理组学和基因组学联合分析的重要桥梁,并为基因长期异常表达导致病理细微变化提供初步证据。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b62b/10023952/bec0c625e88c/gr1.jpg

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