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基于免疫组化图像深度学习的乳腺癌差异定位蛋白鉴定。

Differentially localized protein identification for breast cancer based on deep learning in immunohistochemical images.

机构信息

College of Bioinformatics Science and Technology, Harbin Medical University, Harbin, 150000, China.

出版信息

Commun Biol. 2024 Aug 2;7(1):935. doi: 10.1038/s42003-024-06548-0.

Abstract

The mislocalization of proteins leads to breast cancer, one of the world's most prevalent cancers, which can be identified from immunohistochemical images. Here, based on the deep learning framework, location prediction models were constructed using the features of breast immunohistochemical images. Ultimately, six differentially localized proteins that with stable differentially predictive localization, maximum localization differences, and whose predicted results are not affected by removing a single image are obtained (CCNT1, NSUN5, PRPF4, RECQL4, UTP6, ZNF500). Further verification reveals that these proteins are not differentially expressed, but are closely associated with breast cancer and have great classification performance. Potential mechanism analysis shows that their co-expressed or co-located proteins and RNAs may affect their localization, leading to changes in interactions and functions that further causes breast cancer. They have the potential to help shed light on the molecular mechanisms of breast cancer and provide assistance for its early diagnosis and treatment.

摘要

蛋白质的定位错误导致了乳腺癌,这是世界上最常见的癌症之一,可以通过免疫组织化学图像来识别。在这里,基于深度学习框架,使用乳腺免疫组织化学图像的特征构建了位置预测模型。最终,获得了六个具有稳定差异定位、最大定位差异的差异定位蛋白,并且其预测结果不受删除单个图像的影响(CCNT1、NSUN5、PRPF4、RECQL4、UTP6、ZNF500)。进一步的验证表明,这些蛋白质没有差异表达,而是与乳腺癌密切相关,并且具有很好的分类性能。潜在的机制分析表明,它们共表达或共定位的蛋白质和 RNA 可能会影响它们的定位,导致相互作用和功能的变化,从而进一步导致乳腺癌。它们有可能帮助揭示乳腺癌的分子机制,并为其早期诊断和治疗提供帮助。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a2c8/11297317/3cc156842bc6/42003_2024_6548_Fig1_HTML.jpg

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