利用定量系统药理学和人工智能推进慢性肾病矿物质骨病的治疗。

Adam Gaweda, Michael Brier, Eleanor Lederer
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摘要

慢性肾脏病矿物质骨病(CKD-MBD)是一种复杂的临床综合征,是导致慢性肾脏病患者心血管死亡率加快的原因。目前的治疗方法未能充分改善临床疗效,这很可能是由于以指南制定者 KDIGO(《肾脏病:改善全球疗效》)阐明的替代生化指标为目标所致。我们假设,利用机器学习与数学建模相结合的系统生物学方法,我们可以测试一种针对矿物质从骨骼向软组织异常移动(这是 CKD-MBD 的特征)的新型治疗方法。该数学模型描述了钙和磷酸盐在标准治疗药物作用下在体内各区间的移动。我们采用的机器学习技术是强化学习(RL)。我们比较了以下四种情况下钙、磷酸盐、PTH 和矿物质从骨骼流出并进入软组织的情况:标准方法 (KDIGO)、使用 RL 实现 KDIGO 指南 (RLKDIGO)、针对异常矿物质通量 (RLFLUX) 以及将实现 KDIGO 指南与最小化异常矿物质通量相结合 (RLKDIGOFLUX)。我们通过模拟证明,与标准方法相比,明确针对异常矿物质通量可显著减少异常矿物质移动,同时获得可接受的生化结果。这些研究凸显了当前治疗目标(主要是继发性甲状旁腺功能亢进)的局限性,并强调了磷酸盐平衡失调在 CKD-MBD 综合征发病过程中的核心作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Leveraging quantitative systems pharmacology and artificial intelligence to advance treatment of chronic kidney disease mineral bone disorder.

Chronic kidney disease mineral bone disorder (CKD-MBD) is a complex clinical syndrome responsible for the accelerated cardiovascular mortality seen in individuals afflicted with CKD. Current approaches to therapy have failed to improve clinical outcomes adequately, likely due to targeting surrogate biochemical parameters as articulated by the guideline developer, Kidney Disease: Improving Global Outcomes (KDIGO). We hypothesized that using a Systems Biology Approach combining machine learning with mathematical modeling, we could test a novel approach to therapy targeting the abnormal movement of mineral out of bone and into soft tissue that is characteristic of CKD-MBD. The mathematical model describes the movement of calcium and phosphate between body compartments in response to standard therapeutic agents. The machine-learning technique we applied is reinforcement learning (RL). We compared calcium, phosphate, parathyroid hormone (PTH), and mineral movement out of bone and into soft tissue under four scenarios: standard approach (KDIGO), achievement of KDIGO guidelines using RL (RLKDIGO), targeting abnormal mineral flux (RLFLUX), and combining achievement of KDIGO guidelines with minimization of abnormal mineral flux (RLKDIGOFLUX). We demonstrate through simulations that explicitly targeting abnormal mineral flux significantly decreases abnormal mineral movement compared with standard approach while achieving acceptable biochemical outcomes. These investigations highlight the limitations of current therapeutic targets, primarily secondary hyperparathyroidism, and emphasize the central role of deranged phosphate homeostasis in the genesis of the CKD-MBD syndrome.NEW & NOTEWORTHY Artificial intelligence is a powerful tool for exploration of complex processes but application to clinical syndromes is challenging. Using a mathematical model describing the movement of calcium and phosphate between body compartments combined with machine learning, we show the feasibility of testing alternative goals of therapy for Chronic Kidney Disease Mineral Bone Disorder while maintaining acceptable biochemical outcomes. These simulations demonstrate the potential for using this platform to generate and test hypotheses in silico rapidly, inexpensively, and safely.

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