College of Computer and Information Engineering, Dezhou University, Dezhou City 253023, China.
Development Department, Suzhou Alphama Biotechnology Co., Ltd, Suzhou City 215000, China.
Nucleic Acids Res. 2024 Jul 5;52(W1):W489-W497. doi: 10.1093/nar/gkae380.
Kinase-targeted inhibitors hold promise for new therapeutic options, with multi-target inhibitors offering the potential for broader efficacy while minimizing polypharmacology risks. However, comprehensive experimental profiling of kinome-wide activity is expensive, and existing computational approaches often lack scalability or accuracy for understudied kinases. We introduce KinomeMETA, an artificial intelligence (AI)-powered web platform that significantly expands the predictive range with scalability for predicting the polypharmacological effects of small molecules across the kinome. By leveraging a novel meta-learning algorithm, KinomeMETA efficiently utilizes sparse activity data, enabling rapid generalization to new kinase tasks even with limited information. This significantly expands the repertoire of accurately predictable kinases to 661 wild-type and clinically-relevant mutant kinases, far exceeding existing methods. Additionally, KinomeMETA empowers users to customize models with their proprietary data for specific research needs. Case studies demonstrate its ability to discover new active compounds by quickly adapting to small dataset. Overall, KinomeMETA offers enhanced kinome virtual profiling capabilities and is positioned as a powerful tool for developing new kinase inhibitors and advancing kinase research. The KinomeMETA server is freely accessible without registration at https://kinomemeta.alphama.com.cn/.
激酶靶向抑制剂为新的治疗选择提供了希望,多靶点抑制剂具有更广泛疗效的潜力,同时最小化多药理学风险。然而,对激酶组进行全面的实验分析是昂贵的,并且现有的计算方法通常缺乏针对研究较少的激酶的可扩展性或准确性。我们引入了 KinomeMETA,这是一个人工智能(AI)驱动的网络平台,通过利用新颖的元学习算法,显著扩展了预测范围的可扩展性,可预测小分子在整个激酶组中的多药理学效应。KinomeMETA 有效地利用稀疏的活性数据,即使在信息有限的情况下,也能快速推广到新的激酶任务,从而实现快速的概括。这将可准确预测的激酶的组合扩展到 661 个野生型和临床相关的突变激酶,远远超过现有方法。此外,KinomeMETA 使用户能够根据特定的研究需求,用自己的专有数据定制模型。案例研究表明,它能够通过快速适应小数据集来发现新的活性化合物。总体而言,KinomeMETA 提供了增强的激酶虚拟分析能力,是开发新的激酶抑制剂和推进激酶研究的强大工具。KinomeMETA 服务器无需注册即可免费访问,网址为 https://kinomemeta.alphama.com.cn/。