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首页> 外文期刊>Analytical Biochemistry: An International Journal of Analytical and Preparative Methods >iMotor-CNN: Identifying molecular functions of cytoskeleton motor proteins using 2D convolutional neural network via Chou's 5-step rule
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iMotor-CNN: Identifying molecular functions of cytoskeleton motor proteins using 2D convolutional neural network via Chou's 5-step rule

机译:催乳酸-CNN:通过Chou的5步规则鉴定使用2D卷积神经网络的细胞骨架电机蛋白的分子函数

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摘要

Motor proteins are the driving force behind muscle contraction and are responsible for the active transportation of most proteins and vesicles in the cytoplasm. There are three superfamilies of cytoskeletal motor proteins with various molecular functions and structures: dynein, kinesin, and myosin. The functional loss of a specific motor protein molecular function has linked to a variety of human diseases, e.g., Charcot-Marie-Tooth disease, kidney disease. Therefore, creating a precise model to classify motor proteins is essential for helping biologists understand their molecular functions and design drug targets according to their impact on human diseases. Here we attempt to classify cytoskeleton motor proteins using deep learning, which has been increasingly and widely used to address numerous problems in a variety of fields resulting in state-of-the-art results. Our effective deep convolutional neural network is able to achieve an independent test accuracy of 97.5%, 96.4%, and 96.1% for each superfamily, respectively. Compared to other state-of-the-art methods, our approach showed a significant improvement in performance across a range of evaluation metrics. Through the proposed study, we provide an effective model for classifying motor proteins and a basis for further research that can enhance the performance of protein function classification using deep learning.
机译:电机蛋白质是肌肉收缩后的驱动力,负责大多数蛋白质和细胞质中的囊泡的活跃运输。有三种细胞骨架电机蛋白质,具有各种分子功能和结构:Dynein,Kinesin和Myosin。特定电机蛋白分子功能的功能丧失与各种人类疾病有关,例如Charcot-Marie-Doother疾病,肾病。因此,创建精确模型以对电机蛋白质进行分类对于帮助生物学家根据其对人类疾病的影响而了解他们的分子功能和设计药物靶标是必不可少的。在这里,我们尝试使用深度学习对细胞骨架电机蛋白进行分类,这已经越来越广泛地用于解决导致最先进的结果中的许多问题。我们有效的深度卷积神经网络能够分别实现独立的测试精度为97.5%,96.4%,96.4%和96.1%,每次小家族96.1%。与其他最先进的方法相比,我们的方法在一系列评估指标上表现出显着改善。通过拟议的研究,我们为分类电机蛋白的分类和进一步研究的基础提供了一种有效的模型,可以使用深度学习来增强蛋白质功能分类的性能。

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