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DeepNovoV2: Better de novo peptide sequencing with deep learning

17 April 2019
Rui Qiao
Ngoc Hieu Tran
L. Xin
B. Shan
Ming Li
A. Ghodsi
ArXiv (abs)PDFHTML
Abstract

We introduce DeepNovoV2, the state-of-the-art neural networks based model for de novo peptide sequencing. Contrary to existing models like DeepNovo or DeepMatch which represents each spectrum as a long sparse vector, in DeepNovoV2, we propose to directly represent a spectrum as a set of (m/z, intensity) pairs. Then we use an order invariant network structure (T-Net) to extract features from the spectrum. By representing spectrums as sets of peaks, we argue that our method is more straightforward and do not have the accuracy-speed/memory trade-off problem. Our experiments show that comparing to the original DeepNovo model, DeepNovoV2 has at least 15% relative improvement on peptide accuracy.

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