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Main Authors: Huang, Xueyuan, Wang, Yuheng, He, Yuanzhi, Gou, Siqi, Bai, Lu, Wu, Wenqian, Liu, Peifeng, Wang, Aijia, Fan, Tianhui, Zhou, Ze, Xu, Jiayu
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2604.24796
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author Huang, Xueyuan
Wang, Yuheng
He, Yuanzhi
Gou, Siqi
Bai, Lu
Wu, Wenqian
Liu, Peifeng
Wang, Aijia
Fan, Tianhui
Zhou, Ze
Xu, Jiayu
author_facet Huang, Xueyuan
Wang, Yuheng
He, Yuanzhi
Gou, Siqi
Bai, Lu
Wu, Wenqian
Liu, Peifeng
Wang, Aijia
Fan, Tianhui
Zhou, Ze
Xu, Jiayu
contents Liver cirrhosis is a major global health problem causing millions of deaths annually, and timely detection with aggressive treatment can significantly improve patients' quality of life. Modelling complex diseases from biomedical data is computationally challenging due to high dimensionality, strong feature correlations, noise, and limited labelled samples. Conventional Machine Learning (ML) pipelines often struggle with robustness, interpretability, and generalisation under such conditions. In this study, we propose an ML-driven multi-stage decision framework for complex disease modelling and therapeutic exploration. The framework integrates single-cell transcriptomic profiling, high-dimensional network-based feature stabilisation, multi-model learning, deep representation construction, and post-hoc decision support. Specifically, single-cell sequencing data were analysed to identify key cellular subpopulations, followed by high-dimensional weighted gene co-expression network analysis (hdWGCNA) to stabilise gene modules under sparsity and noise. To enhance non-linear feature interaction modelling, tabular molecular features were restructured into two-dimensional disease maps and analysed using a CNN. Finally, molecular docking was incorporated as a decision-support module to evaluate candidate therapeutic compounds. Using liver cirrhosis as a representative case, the framework identified a disease-associated endothelial subpopulation and extracted seven robust signature genes (HSPB1, GADD45A, CLDN5, ATP1B3, C1QBP, ENPP2, and PARL). The CNN-based representation learning module outperformed conventional pipelines in classification. The framework is disease-agnostic and readily extends to other omics-driven biomedical applications involving uncertainty, heterogeneity, and limited samples.
format Preprint
id arxiv_https___arxiv_org_abs_2604_24796
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle A multi-stage soft computing framework for complex disease modelling and decision support: A liver cirrhosis case study
Huang, Xueyuan
Wang, Yuheng
He, Yuanzhi
Gou, Siqi
Bai, Lu
Wu, Wenqian
Liu, Peifeng
Wang, Aijia
Fan, Tianhui
Zhou, Ze
Xu, Jiayu
Other Quantitative Biology
Machine Learning
Liver cirrhosis is a major global health problem causing millions of deaths annually, and timely detection with aggressive treatment can significantly improve patients' quality of life. Modelling complex diseases from biomedical data is computationally challenging due to high dimensionality, strong feature correlations, noise, and limited labelled samples. Conventional Machine Learning (ML) pipelines often struggle with robustness, interpretability, and generalisation under such conditions. In this study, we propose an ML-driven multi-stage decision framework for complex disease modelling and therapeutic exploration. The framework integrates single-cell transcriptomic profiling, high-dimensional network-based feature stabilisation, multi-model learning, deep representation construction, and post-hoc decision support. Specifically, single-cell sequencing data were analysed to identify key cellular subpopulations, followed by high-dimensional weighted gene co-expression network analysis (hdWGCNA) to stabilise gene modules under sparsity and noise. To enhance non-linear feature interaction modelling, tabular molecular features were restructured into two-dimensional disease maps and analysed using a CNN. Finally, molecular docking was incorporated as a decision-support module to evaluate candidate therapeutic compounds. Using liver cirrhosis as a representative case, the framework identified a disease-associated endothelial subpopulation and extracted seven robust signature genes (HSPB1, GADD45A, CLDN5, ATP1B3, C1QBP, ENPP2, and PARL). The CNN-based representation learning module outperformed conventional pipelines in classification. The framework is disease-agnostic and readily extends to other omics-driven biomedical applications involving uncertainty, heterogeneity, and limited samples.
title A multi-stage soft computing framework for complex disease modelling and decision support: A liver cirrhosis case study
topic Other Quantitative Biology
Machine Learning
url https://arxiv.org/abs/2604.24796