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Interpretable molecular decision-making with DNA-based scalable and memory-efficient tree computation

Nature Communications. 2025-11; 
Junlan Liu, Qian Tang, Yongqi Han, Jinxing Song, Fei Wang, Pei Guo, Chunhai Fan, Weihong Tan, Da Han Institute of Molecular Medicine (IMM), Renji Hospital, School of Medicine, Shanghai Jiao Tong University
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Abstract

DNA computing has emerged as a transformative paradigm for tackling computational problems at the molecular level, yet existing approaches remain constrained in algorithmic interpretability, efficiency, and scalability. Here we present a DNA-based decision tree system that modularly embeds classification rules into DNA strand displacement reaction cascades for interpretable decision-making across various configurations. It supports cascaded networks exceeding 10 layers, parallel computation of 13 decision trees in a Random Forest involving 333 strands, and multimode operation (linear/nonlinear, binary/multi-class, single/tandem trees), while maintaining low leakage, rapid signal propagation, and minimal computa... More

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