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模拟不同临床情况下肝脏的再生能力。

Modelling the liver's regenerative capacity across different clinical conditions.

作者信息

Nguyen-Lefebvre Anh Thu, Ghosh Soumita, Baciu Cristina, Hasjim Bima J, Naimimohasses Sara, Oldani Graziano, Pasini Elisa, Brudno Michael, Selzner Nazia, Wrana Jeffrey, Bhat Mamatha

机构信息

Ajmera Transplant Program, University Health Network, Toronto, Ontario, Canada.

Lunenfeld-Tanenbaum Research Institute, Toronto, Ontario, Canada.

出版信息

JHEP Rep. 2025 May 30;7(8):101465. doi: 10.1016/j.jhepr.2025.101465. eCollection 2025 Aug.

Abstract

BACKGROUND & AIMS: Liver regeneration is essential for recovery following injury, but this process can be impaired by factors such as sex, age, metabolic disorders, fibrosis, and immunosuppressive therapies. We aimed to identify key transcriptomic, proteomic, and serum biomarkers of regeneration in mouse models under these diverse conditions using systems biology and machine learning approaches.

METHODS

Six mouse models, each undergoing 75% hepatectomy, were used to study regeneration across distinct clinical contexts: young males and females, aged mice, stage 2 fibrosis, steatosis, and tacrolimus exposure. A novel contrastive deep learning framework with triplet loss was developed to map regenerative trajectories and identify genes associated with regenerative efficiency.

RESULTS

Despite achieving ≥75% liver mass restoration by day 7, regeneration was significantly delayed in aged, steatotic, and fibrotic models, as indicated by reduced Ki-67 staining on day 2 (0.0001 for all). Interestingly, fibrotic livers exhibited reduced collagen deposition and partial regression to stage 1 fibrosis post-hepatectomy. Transcriptomic and proteomic analyses revealed consistent downregulation of cell cycle genes in impaired regeneration. The deep learning model integrating clinical and transcriptomic data predicted regenerative outcomes with 87.9% accuracy. SHAP (SHapley Additive exPlanations) highlighted six key predictive genes: , and . Proteomic validation and human SPLiT-seq (split-pool ligation-based transcriptome sequencing) data further supported their relevance across species.

CONCLUSIONS

This study identifies conserved cell cycle regulators underlying efficient liver regeneration and provides a predictive framework for evaluating regenerative capacity. The integration of deep learning and multi-omics profiling provides a promising approach to better understand liver regeneration and may help guide therapeutic strategies, especially in complex clinical settings.

IMPACT AND IMPLICATIONS

The aim of this study was to identify key transcriptomic, proteomic, and serum biomarkers of regeneration in mouse models under diverse conditions, using systems biology and machine learning approaches. Key molecular drivers of liver regeneration across diverse clinical conditions were identified using innovative deep learning and multi-omics approaches. By identifying conserved cell cycle genes predictive of regenerative outcomes, this study offers a powerful framework to assess and potentially enhance liver recovery in older patients, those with fibrosis or steatosis, and/or those under immunosuppression.

摘要

背景与目的

肝再生对于损伤后的恢复至关重要,但这一过程可能会受到性别、年龄、代谢紊乱、纤维化和免疫抑制疗法等因素的影响。我们旨在使用系统生物学和机器学习方法,在这些不同条件下的小鼠模型中确定再生的关键转录组学、蛋白质组学和血清生物标志物。

方法

使用六个均接受75%肝切除术的小鼠模型,研究不同临床背景下的肝再生情况:年轻雄性和雌性小鼠、老年小鼠、2期纤维化、脂肪变性和接受他克莫司治疗的小鼠。开发了一种带有三元组损失的新型对比深度学习框架来绘制再生轨迹,并识别与再生效率相关的基因。

结果

尽管在第7天时肝脏质量恢复达到≥75%,但在老年、脂肪变性和纤维化模型中,再生明显延迟,第2天时Ki-67染色减少表明了这一点(所有情况均为0.0001)。有趣的是,纤维化肝脏在肝切除术后胶原蛋白沉积减少,并部分回归到1期纤维化。转录组学和蛋白质组学分析显示,在受损的再生过程中细胞周期基因持续下调。整合临床和转录组数据的深度学习模型预测再生结果的准确率为87.9%。SHAP(Shapley加性解释)突出了六个关键预测基因: 、 和 。蛋白质组学验证和人类SPLiT-seq(基于分割池连接的转录组测序)数据进一步支持了它们在不同物种间的相关性。

结论

本研究确定了高效肝再生背后保守的细胞周期调节因子,并提供了一个评估再生能力的预测框架。深度学习与多组学分析的整合为更好地理解肝再生提供了一种有前景的方法,并可能有助于指导治疗策略,尤其是在复杂的临床环境中。

影响与意义

本研究旨在使用系统生物学和机器学习方法确定不同条件下小鼠模型中再生的关键转录组学、蛋白质组学和血清生物标志物。使用创新的深度学习和多组学方法确定了不同临床条件下肝再生的关键分子驱动因素。通过识别预测再生结果的保守细胞周期基因,本研究提供了一个强大的框架,以评估并潜在地增强老年患者、患有纤维化或脂肪变性的患者和/或接受免疫抑制治疗的患者的肝脏恢复能力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1d3d/12284365/f491aff3a5a4/ga1.jpg

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