Tarasyuk Olga, Gorbenko Anatoliy, Eberl Matthias, Topley Nicholas, Zhang Jingjing, Shafik Rishad, Yakovlev Alex
School of Engineering, Newcastle University, Newcastle upon Tyne, NE1 7RU, United Kingdom.
School of Built Environment, Engineering and Computing, Leeds Beckett University, Leeds, LS1 3HE, United Kingdom.
Bioinform Adv. 2025 Jun 19;5(1):vbaf140. doi: 10.1093/bioadv/vbaf140. eCollection 2025.
The analysis of complex biomedical datasets is becoming central to understanding disease mechanisms, aiding risk stratification and guiding patient management. However, the utility of computational methods is often constrained by their lack of interpretability, which is particularly relevant in clinically critical areas where rapid initiation of targeted therapies is key.
To define diagnostically relevant immune signatures in peritoneal dialysis patients presenting with acute peritonitis, we analysed a comprehensive array of cellular and soluble parameters in cloudy peritoneal effluents. Utilizing Tsetlin Machines, a logic-based machine learning approach, we identified pathogen-specific immune fingerprints for different bacterial groups, each characterized by unique biomarker combinations. Unlike traditional 'black box' machine learning models, Tsetlin Machines identified clear, logical rules in the dataset that pointed towards distinctly nuanced immune responses to different types of bacterial infection. Importantly, these immune signatures could be easily visualized to facilitate their interpretation, thereby allowing for rapid, accurate and transparent decision-making. This unique diagnostic capacity of Tsetlin Machines could help deliver early patient risk stratification and support informed treatment choices in advance of conventional microbiological culture results, thus guiding antibiotic stewardship and contributing to improved patient outcomes.
All underlying tools and the anonymized data underpinning this publication are available at https://github.com/anatoliy-gorbenko/biomarkers-visualization.
复杂生物医学数据集的分析正成为理解疾病机制、辅助风险分层和指导患者管理的核心。然而,计算方法的效用常常因其缺乏可解释性而受到限制,这在快速启动靶向治疗至关重要的临床关键领域尤为相关。
为了确定患有急性腹膜炎的腹膜透析患者的诊断相关免疫特征,我们分析了浑浊腹膜透析液中的一系列细胞和可溶性参数。利用基于逻辑的机器学习方法Tsetlin机,我们为不同细菌群体确定了病原体特异性免疫指纹,每个指纹都由独特的生物标志物组合表征。与传统的“黑箱”机器学习模型不同,Tsetlin机在数据集中识别出清晰、逻辑的规则,这些规则指向对不同类型细菌感染的明显细微免疫反应。重要的是,这些免疫特征可以很容易地可视化以促进其解释,从而允许快速、准确和透明的决策。Tsetlin机的这种独特诊断能力有助于在传统微生物培养结果之前实现早期患者风险分层并支持明智的治疗选择,从而指导抗生素管理并有助于改善患者预后。
本出版物所基于的所有基础工具和匿名数据可在https://github.com/anatoliy-gorbenko/biomarkers-visualization获取。