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High-accuracy modeling of antibody structures by a search for minimum-energy recombination of backbone fragments

机译:通过搜索骨架片段的最小能量重组对抗体结构进行高精度建模

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摘要

Current methods for antibody structure prediction rely on sequence homology to known structures. Although this strategy often yields accurate predictions, models can be stereo-chemically strained. Here, we present a fully automated algorithm, called AbPredict, that disregards sequence homology, and instead uses a Monte Carlo search for low-energy conformations built from backbone segments and rigid-body orientations that appear in antibody molecular structures. We find cases where AbPredict selects accurate loop templates with sequence identity as low as 10%, whereas the template of highest sequence identity diverges substantially from the query’s conformation. Accordingly, in several cases reported in the recent Antibody Modeling Assessment benchmark, AbPredict models were more accurate than those from any participant, and the models’ stereo-chemical quality was consistently high. Furthermore, in two blind cases provided to us by crystallographers prior to structure determination, the method achieved <1.5 Ångstrom overall backbone accuracy. Accurate modeling of unstrained antibody structures will enable design and engineering of improved binders for biomedical research directly from sequence.
机译:用于抗体结构预测的当前方法依赖于与已知结构的序列同源性。尽管此策略通常可以产生准确的预测,但是可以对模型进行立体化学筛选。在这里,我们提出了一种称为AbPredict的全自动算法,该算法不考虑序列同源性,而是使用Monte Carlo搜索来寻找低能构象,该构象是由抗体分子结构中出现的骨架片段和刚体取向构建的。我们发现以下情况:AbPredict选择序列同一性低至10%的准确环模板,而序列同一性最高的模板则与查询的构型大不相同。因此,在最近的抗体建模评估基准中报告的一些情况下,AbPredict模型比任何参与者的模型都更准确,并且该模型的立体化学质量始终很高。此外,在晶体学家在确定结构之前向我们提供的两种盲目情况下,该方法实现了小于1.5埃的整体骨架精度。未应变抗体结构的准确建模将使直接从序列进行生物医学研究的改进结合剂的设计和工程化成为可能。

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