Deqformer: high-definition and scalable deep learning probe design method

Author:

Cai Yantong12ORCID,Lv Jia12,Li Rui12,Huang Xiaowen12,Wang Shi123456,Bao Zhenmin456,Zeng Qifan123456

Affiliation:

1. MOE Key Laboratory of Marine Genetics and Breeding & Fang Zongxi Center for Marine Evo-Devo , College of Marine Life Sciences, , Qingdao 266003 , China

2. Ocean University of China , College of Marine Life Sciences, , Qingdao 266003 , China

3. Laboratory for Marine Biology and Biotechnology, Laoshan Laboratory , Qingdao 266237 , China

4. Southern Marine Science and Engineer Guangdong Laboratory , Guangzhou , China

5. Key Laboratory of Tropical Aquatic Germplasm of Hainan Province , Sanya Oceanographic Institution, , Sanya 572000 , China

6. Ocean University of China , Sanya Oceanographic Institution, , Sanya 572000 , China

Abstract

Abstract Target enrichment sequencing techniques are gaining widespread use in the field of genomics, prized for their economic efficiency and swift processing times. However, their success depends on the performance of probes and the evenness of sequencing depth among each probe. To accurately predict probe coverage depth, a model called Deqformer is proposed in this study. Deqformer utilizes the oligonucleotides sequence of each probe, drawing inspiration from Watson–Crick base pairing and incorporating two BERT encoders to capture the underlying information from the forward and reverse probe strands, respectively. The encoded data are combined with a feed-forward network to make precise predictions of sequencing depth. The performance of Deqformer is evaluated on four different datasets: SNP panel with 38 200 probes, lncRNA panel with 2000 probes, synthetic panel with 5899 probes and HD-Marker panel for Yesso scallop with 11 000 probes. The SNP and synthetic panels achieve impressive factor 3 of accuracy (F3acc) of 96.24% and 99.66% in 5-fold cross-validation. F3acc rates of over 87.33% and 72.56% are obtained when training on the SNP panel and evaluating performance on the lncRNA and HD-Marker datasets, respectively. Our analysis reveals that Deqformer effectively captures hybridization patterns, making it robust for accurate predictions in various scenarios. Deqformer leads to a novel perspective for probe design pipeline, aiming to enhance efficiency and effectiveness in probe design tasks.

Funder

National Key Research and Development Program of China

Key Research and Development Project of Shandong Province

National Natural Science Foundation of China

Taishan Scholar Project Fund of Shandong Province of China

High-performance Computing Platform of YZBSTCACC and Center for High Performance Computing and System Simulation

Pilot National Laboratory for Marine Science and Technology

Publisher

Oxford University Press (OUP)

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