TransMA: an explainable multi-modal deep learning model for predicting properties of ionizable lipid nanoparticles in mRNA delivery
Kun Wu, Zixu Wang, Xiulong Yang, Yangyang Chen, Zhenqi Han, Jialu, Zhang, Lizhuang Liu

TL;DR
TransMA is an explainable multi-modal deep learning model that accurately predicts ionizable lipid nanoparticles' transfection efficiency, aiding faster and cost-effective mRNA delivery system design.
Contribution
The paper introduces TransMA, a novel multi-modal model combining 3D molecular structure and sequence data for transfection efficiency prediction, with state-of-the-art performance and interpretability.
Findings
TransMA outperforms existing models on LNP datasets.
It captures structural features influencing transfection efficiency.
The model generalizes well to external data.
Abstract
As the primary mRNA delivery vehicles, ionizable lipid nanoparticles (LNPs) exhibit excellent safety, high transfection efficiency, and strong immune response induction. However, the screening process for LNPs is time-consuming and costly. To expedite the identification of high-transfection-efficiency mRNA drug delivery systems, we propose an explainable LNPs transfection efficiency prediction model, called TransMA. TransMA employs a multi-modal molecular structure fusion architecture, wherein the fine-grained atomic spatial relationship extractor named molecule 3D Transformer captures three-dimensional spatial features of the molecule, and the coarse-grained atomic sequence extractor named molecule Mamba captures one-dimensional molecular features. We design the mol-attention mechanism block, enabling it to align coarse and fine-grained atomic features and captures relationships…
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Code & Models
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Taxonomy
TopicsRNA Interference and Gene Delivery
MethodsAttention Is All You Need · Linear Layer · Multi-Head Attention · Softmax · Byte Pair Encoding · Layer Normalization · ALIGN · Label Smoothing · Absolute Position Encodings · Position-Wise Feed-Forward Layer
