用于增强药物-靶点相互作用预测和可信度评估的专家混合方法

bioRxiv Pub Date : 2024-08-08 DOI:10.1101/2024.08.06.606753
Yijingxiu Lu, Sangseon Lee, Soosung Kang, Sun Kim
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引用次数: 0

摘要

近年来,针对药物靶点相互作用(DTI)预测开发了大量深度学习模型。这些 DTI 模型擅长处理具有不同分布和特征的数据,但在应用于未见数据点时,往往会产生不一致的预测结果。这种不一致性给希望在下游药物开发任务中利用这些模型的研究人员带来了挑战。特别是在筛选潜在活性化合物时,提供一份可能与目标蛋白质发生相互作用的候选化合物排序列表可以指导科学家确定实验工作的优先顺序。然而,要做到这一点并不容易,因为目前的每个 DTI 模型都能根据其学习到的特征空间提供不同的列表。为了解决这些问题,我们提出了 EnsDTI,这是一种专家混合物架构,旨在提高现有 DTI 模型的性能,从而进行更可靠的药物-目标相互作用预测。我们整合了一个归纳保形预测器,为每个预测提供置信度分数,使 EnsDTI 能够为特定靶标提供可靠的候选列表。在四个基准数据集上进行的实证评估表明,EnsDTI不仅提高了DTI预测性能,与性能最好的基线相比,平均准确率提高了2.7%,而且还提供了可信度最高的候选药物列表,展示了它在未来应用中对潜在活性化合物进行排序的潜力。CCS 概念 - 应用计算 → 生物信息学; - 计算方法 → 人工智能。
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Mixture-of-Experts Approach for Enhanced Drug-Target Interaction Prediction and Confidence Assessment
In recent years, numerous deep learning models have been developed for drug-target interaction (DTI) prediction. These DTI models specialize in handling data with distinct distributions and features, often yielding inconsistent predictions when applied to unseen data points. This inconsistency poses a challenge for researchers aiming to utilize these models in downstream drug development tasks. Particularly in screening potential active compounds, providing a ranked list of candidates that likely interact with the target protein can guide scientists in prioritizing their experimental efforts. However, achieving this is difficult as each current DTI model can provide a different list based on its learned feature space. To address these issues, we propose EnsDTI, a Mixture-of-Experts architecture designed to enhance the performance of existing DTI models for more reliable drug-target interaction predictions. We integrate an inductive conformal predictor to provide confidence scores for each prediction, enabling EnsDTI to offer a reliable list of candidates for a specific target. Empirical evaluations on four benchmark datasets demonstrate that EnsDTI not only improves DTI prediction performance with an average accuracy improvement of 2.7% compared to the best performing baseline, but also offers a reliable ranked list of candidate drugs with the highest confidence, showcasing its potential for ranking potential active compounds in future applications. CCS CONCEPTS • Applied computing → Bioinformatics; • Computing methodologies → Artificial intelligence.
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