Anchored-fusion Enables Targeted Fusion Search in Bulk and Single-cell RNA Sequencing Data
Overview
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Here, we present Anchored-fusion, a highly sensitive fusion gene detection tool. It anchors a gene of interest, which often involves driver fusion events, and recovers non-unique matches of short-read sequences that are typically filtered out by conventional algorithms. In addition, Anchored-fusion contains a module based on a deep learning hierarchical structure that incorporates self-distillation learning (hierarchical view learning and distillation [HVLD]), which effectively filters out false positive chimeric fragments generated during sequencing while maintaining true fusion genes. Anchored-fusion enables highly sensitive detection of fusion genes, thus allowing for application in cases with low sequencing depths. We benchmark Anchored-fusion under various conditions and found it outperformed other tools in detecting fusion events in simulated data, bulk RNA sequencing (bRNA-seq) data, and single-cell RNA sequencing (scRNA-seq) data. Our results demonstrate that Anchored-fusion can be a useful tool for fusion detection tasks in clinically relevant RNA-seq data and can be applied to investigate intratumor heterogeneity in scRNA-seq data.
Precision Adverse Drug Reactions Prediction with Heterogeneous Graph Neural Network.
Gao Y, Zhang X, Sun Z, Chandak P, Bu J, Wang H Adv Sci (Weinh). 2024; :e2404671.
PMID: 39630592 PMC: 11775569. DOI: 10.1002/advs.202404671.