Fan Zheqi, Zhao Houming, Zhou Jingcheng, Li Dingchang, Fan Yunlong, Bi Yiming, Ji Shuaifei
Department of Orthopaedics, The First Medical Centre, Chinese PLA General Hospital, Beijing.
Department of Urology, The Third Medical Center, Chinese PLA General Hospital, Beijing.
Int J Surg. 2024 Dec 1;110(12):7671-7686. doi: 10.1097/JS9.0000000000001781.
Deep learning models have emerged as rapid, accurate, and effective approaches for clinical decisions. Through a combination of drug screening and deep learning models, drugs that may benefit patients before and after surgery can be discovered to reduce the risk of complications or speed recovery. However, most existing drug prediction methods have high data requirements and lack interpretability, which has a limited role in adjuvant surgical treatment. To address these limitations, the authors propose the attention-based convolution transpositional interfusion network (ACTIN) for flexible and efficient drug discovery. ACTIN leverages the graph convolution and the transformer mechanism, utilizing drug and transcriptome data to assess the impact of chemical pharmacophores containing certain elements on gene expression. Remarkably, just with only 393 training instances, only one-tenth of the other models, ACTIN achieves state-of-the-art performance, demonstrating its effectiveness even with limited data. By incorporating chemical element embedding disparity and attention mechanism-based parameter analysis, it identifies the possible pharmacophore containing certain elements that could interfere with specific cell lines, which is particularly valuable for screening useful pharmacophores for new drugs tailored to adjuvant surgical treatment. To validate its reliability, the authors conducted comprehensive examinations by utilizing transcriptome data from the lung tissue of fatal COVID-19 patients as additional input for ACTIN, the authors generated novel lead chemicals that align with clinical evidence. In summary, ACTIN offers insights into the perturbation biases of elements within pharmacophore on gene expression, which holds the potential for guiding the development of new drugs that benefit surgical treatment.
深度学习模型已成为临床决策中快速、准确且有效的方法。通过药物筛选与深度学习模型相结合,可以发现术前和术后可能使患者受益的药物,以降低并发症风险或加速康复。然而,大多数现有的药物预测方法对数据要求较高且缺乏可解释性,在辅助手术治疗中作用有限。为解决这些局限性,作者提出了基于注意力的卷积转置融合网络(ACTIN),用于灵活高效的药物发现。ACTIN利用图卷积和Transformer机制,利用药物和转录组数据评估含特定元素的化学药效团对基因表达的影响。值得注意的是,ACTIN仅用393个训练实例(仅为其他模型的十分之一)就实现了领先的性能,表明即使数据有限它也很有效。通过纳入化学元素嵌入差异和基于注意力机制的参数分析,它识别出可能干扰特定细胞系的含特定元素的药效团,这对于筛选适合辅助手术治疗的新药的有用药效团特别有价值。为验证其可靠性,作者利用致命COVID-19患者肺组织的转录组数据作为ACTIN的额外输入进行了全面检查,作者生成了与临床证据相符的新型先导化合物。总之,ACTIN提供了对药效团内元素对基因表达的扰动偏差的见解,这有可能指导有益于手术治疗的新药开发。