Gupta Suranjana, Gee Michelle M, Newton Adam J H, Kuttippurathu Lakshmi, Moss Alison, Tompkins John D, Schwaber James S, Vadigepalli Rajanikanth, Lytton William W
Department of Physiology and Pharmacology, SUNY Downstate Health Sciences University, Brooklyn, NY, USA.
Daniel Baugh Institute for Functional Genomics/Computational Biology, Department of Pathology and Genomic Medicine, Thomas Jefferson University, Philadelphia, PA, USA.
J Physiol. 2025 Mar;603(7):2119-2138. doi: 10.1113/JP287595. Epub 2025 Mar 12.
The intrinsic cardiac nervous system (ICNS), termed as the heart's 'little brain', is the final point of neural regulation of cardiac function. Studying the dynamic behaviour of these ICNS neurons via multiscale neuronal computer models has been limited by the sparsity of electrophysiological data. We developed and analysed a computational library of neuronal electrophysiological models based on single neuron transcriptomic data obtained from ICNS neurons. Each neuronal genotype was characterized by a unique combination of ion channels identified from the transcriptomic data, using a cycle threshold cutoff that ensured the electrical excitability of the neuronal models. The parameters of the ion channel models were grounded based on passive properties (resting membrane potential, input impedance and rheobase) to avoid biasing the dynamic behaviour of the model. Consistent with experimental observations, the emergent model dynamics showed phasic activity in response to the current clamp stimulus in a majority of neuronal genotypes (61%). Additionally, 24% of the ICNS neurons showed a tonic response, 11% were phasic-to-tonic with increasing current stimulation and 3% showed tonic-to-phasic behaviour. The computational approach and the library of models bridge the gap between widely available molecular-level gene expression and sparse cellular-level electrophysiology for studying the functional role of the ICNS in cardiac regulation and pathology. KEY POINTS: Computational models were developed of neuron electrophysiology from single-cell transcriptomic data from neurons in the heart's 'little brain': the intrinsic cardiac nervous system. The single-cell transcriptomic data were thresholded to select the ion channel combinations in each neuronal model. The library of neuronal models was constrained by the passive electrical properties of the neurons and predicted a distribution of phasic and tonic responses that aligns with experimental observations. The ratios of model-predicted conductance values are correlated with the gene expression ratios from transcriptomic data. These neuron models are a first step towards connecting single-cell transcriptomic data to dynamic, predictive physiology-based models.
心脏固有神经系统(ICNS)被称为心脏的“小脑”,是心脏功能神经调节的最后一点。通过多尺度神经元计算机模型研究这些ICNS神经元的动态行为一直受到电生理数据稀疏性的限制。我们基于从ICNS神经元获得的单细胞转录组数据,开发并分析了一个神经元电生理模型的计算库。每个神经元基因型都由从转录组数据中识别出的离子通道的独特组合来表征,使用循环阈值截止来确保神经元模型的电兴奋性。离子通道模型的参数基于被动特性(静息膜电位、输入阻抗和基强度)进行设定,以避免对模型的动态行为产生偏差。与实验观察结果一致,在大多数神经元基因型(61%)中,出现的模型动力学显示对电流钳刺激有相位活动。此外,24%的ICNS神经元表现出紧张性反应,11%随着电流刺激增加表现出从相位到紧张性的反应,3%表现出从紧张性到相位的行为。这种计算方法和模型库弥合了广泛可用的分子水平基因表达与稀疏的细胞水平电生理学之间的差距,用于研究ICNS在心脏调节和病理学中的功能作用。要点:从心脏“小脑”(即心脏固有神经系统)的神经元单细胞转录组数据开发了神经元电生理计算模型。对单细胞转录组数据进行阈值处理,以选择每个神经元模型中的离子通道组合。神经元模型库受神经元的被动电学特性约束,并预测了与实验观察结果一致的相位和紧张性反应分布。模型预测的电导值比率与转录组数据中的基因表达比率相关。这些神经元模型是将单细胞转录组数据与基于动态、预测性生理学的模型联系起来的第一步。