Evaluation of the role of comedication properties in the severity of drug-induced liver injury using machine learning techniques.

Irene Victoria Bermúdez-Pérez, Ismael Alvarez-Alvarez, Inmaculada Medina-Cáliz, Mercedes Robles-Diaz, Hao Niu, Minjun Chen, Raúl J Andrade, Mª Isabel Lucena, Camilla Stephens, Andrés Gonzalez-Jimenez
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Abstract

Background: Drug-induced liver injury (DILI) is a complex liver pathology modulated by multiple factors, most of which remain unknown. Previous studies have suggested that concomitant medications and patient characteristics play an important role as modulators of this disease. This study aimed to determine the most relevant concomitant medications and patient characteristics that influence the severity of idiosyncratic DILI.

Methods: Two clinical databases, discovery and validation, were analyzed to evaluate host and drug properties. Predictive algorithms, elastic net regression model and logistic regression model, were implemented using R, both achieving ROC AUC > 0.7.

Results: The findings revealed the existence of significant relationship between DILI severity and multiple factors. These factors included: hepatocellular injury, hydrophobic drugs with logP > 3 (octanol-water partition coefficient), and the use of concomitant medications containing halogen compounds or heterorings when taken together with culprit drugs with significant hepatic metabolism.

Conclusions: These findings offer valuable insights into predicting the severity of DILI. By identifying the key factors that influence the severity of DILI, it would be possible for healthcare providers to predict the severity of damage in a patient with DILI. This enables early interventions in cases of DILI, thus subsequently reducing its negative effects.

使用机器学习技术评估药物特性在药物性肝损伤严重程度中的作用。
背景:药物性肝损伤(DILI)是一种复杂的肝脏病理,由多种因素调节,其中大多数因素尚不清楚。先前的研究表明,伴随药物和患者特征在该疾病的调节中起重要作用。本研究旨在确定影响特异性DILI严重程度的最相关的伴随药物和患者特征。方法:对发现和验证两个临床数据库进行分析,评价宿主和药物的性质。使用R实现预测算法弹性网络回归模型和逻辑回归模型,均达到ROC AUC > 0.7。结果:DILI严重程度与多种因素存在显著相关。这些因素包括:肝细胞损伤,具有logP - >3(辛醇-水分配系数)的疏水药物,以及与具有显著肝代谢的罪魁祸首药物同时使用含卤素化合物或杂环化合物的药物。结论:这些发现为预测DILI的严重程度提供了有价值的见解。通过确定影响DILI严重程度的关键因素,医疗保健提供者有可能预测DILI患者损伤的严重程度。这使得DILI病例能够得到早期干预,从而减少其负面影响。
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