论文标题

Pointiso:基于点云的深度学习模型,用于通过基于注意力的分割来检测LC-MS MAP中任意过度肽特征

PointIso: Point Cloud Based Deep Learning Model for Detecting Arbitrary-Precision Peptide Features in LC-MS Map through Attention Based Segmentation

论文作者

Zohora, Fatema Tuz, Rahman, M Ziaur, Tran, Ngoc Hieu, Xin, Lei, Shan, Baozhen, Li, Ming

论文摘要

发现疾病生物标志物的一种有前途的技术是,通过基于串联的质谱法(LC-MS/MS)的定量蛋白质组学来测量多种生物群样品中的相对蛋白质丰度。关键步骤涉及LC-MS图中的肽特征检测以及其电荷和强度。现有的启发式算法由于参数的不同设置导致结果明显不同,因此存在不准确的参数。因此,我们建议PointISO满足适用于肽特征检测的自动化系统,该系统能够找到适当的参数本身,并且很容易适应不同类型的数据集。它由一个基于注意力的扫描步骤组成,用于分割肽特征的多分支模式以及电荷以及将这些同位素分组为潜在肽特征的序列分类步骤。 PointISO是基于云的第一个任意精确学习网络,可解决该问题,并在基准数据集中实现98%的高质量MS/MS标识检测,该数据集中比其他几种广泛使用的算法更高。除了为蛋白质组学研究做出贡献外,我们认为我们的新型分割技术也应为一般图像处理领域服务。

A promising technique of discovering disease biomarkers is to measure the relative protein abundance in multiple biofluid samples through liquid chromatography with tandem mass spectrometry (LC-MS/MS) based quantitative proteomics. The key step involves peptide feature detection in LC-MS map, along with its charge and intensity. Existing heuristic algorithms suffer from inaccurate parameters since different settings of the parameters result in significantly different outcomes. Therefore, we propose PointIso, to serve the necessity of an automated system for peptide feature detection that is able to find out the proper parameters itself, and is easily adaptable to different types of datasets. It consists of an attention based scanning step for segmenting the multi-isotopic pattern of peptide features along with charge and a sequence classification step for grouping those isotopes into potential peptide features. PointIso is the first point cloud based, arbitrary-precision deep learning network to address the problem and achieves 98% detection of high quality MS/MS identifications in a benchmark dataset, which is higher than several other widely used algorithms. Besides contributing to the proteomics study, we believe our novel segmentation technique should serve the general image processing domain as well.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源