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Transmembrane helix prediction using amino acid property features and latent semantic analysis

机译:利用氨基酸特性特征和潜在语义分析的跨膜螺旋预测

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摘要

BackgroundPrediction of transmembrane (TM) helices by statistical methods suffers from lack of sufficient training data. Current best methods use hundreds or even thousands of free parameters in their models which are tuned to fit the little data available for training. Further, they are often restricted to the generally accepted topology "cytoplasmic-transmembrane-extracellular" and cannot adapt to membrane proteins that do not conform to this topology. Recent crystal structures of channel proteins have revealed novel architectures showing that the above topology may not be as universal as previously believed. Thus, there is a need for methods that can better predict TM helices even in novel topologies and families.
机译:背景技术通过统计学方法对跨膜(TM)螺旋的预测遭受缺乏足够的训练数据的困扰。当前的最佳方法在其模型中使用了数百甚至数千个免费参数,这些参数经过调整以适合于可用于训练的少量数据。此外,它们通常限于普遍接受的拓扑“胞质-跨膜-细胞外”,并且不能适应不符合该拓扑的膜蛋白。通道蛋白的最新晶体结构揭示了新颖的结构,表明上述拓扑可能不像以前认为的那样普遍。因此,需要即使在新的拓扑和族中也能够更好地预测TM螺旋的方法。

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