Ingram Sonia, Chisholm Kim I, Wang Feng, De Koninck Yves, Denk Franziska, Goodwin George L
Sonia Ingram, Data Scientist, Contract Researcher for King's College London, London, United Kingdom.
Pain Centre Versus Arthritis, School of Life Sciences, University of Nottingham, Nottingham, United Kingdom.
Pain. 2024 May 1;165(5):1131-1141. doi: 10.1097/j.pain.0000000000003116. Epub 2023 Dec 15.
Heightened spontaneous activity in sensory neurons is often reported in individuals living with chronic pain. It is possible to study this activity in rodents using electrophysiology, but these experiments require great skill and can be prone to bias. Here, we have examined whether in vivo calcium imaging with GCaMP6s can be used as an alternative approach. We show that spontaneously active calcium transients can be visualised in the fourth lumbar dorsal root ganglion (L4 DRG) through in vivo imaging in a mouse model of inflammatory pain. Application of lidocaine to the nerve, between the inflamed site and the DRG, silenced spontaneous firing and revealed the true baseline level of calcium for spontaneously active neurons. We used these data to train a machine learning algorithm to predict when a neuron is spontaneously active. We show that our algorithm is accurate in 2 different models of pain: intraplantar complete Freund adjuvant and antigen-induced arthritis, with accuracies of 90.0% ±1.2 and 85.9% ±2.1, respectively, assessed against visual inspection by an experienced observer. The algorithm can also detect neuronal activity in imaging experiments generated in a different laboratory using a different microscope configuration (accuracy = 94.0% ±2.2). We conclude that in vivo calcium imaging can be used to assess spontaneous activity in sensory neurons and provide a Google Colaboratory Notebook to allow anyone easy access to our novel analysis tool, for the assessment of spontaneous neuronal activity in their own imaging setups.
慢性疼痛患者的感觉神经元自发活动通常会增强。利用电生理学方法在啮齿动物中研究这种活动是可行的,但这些实验需要很高的技巧,而且容易产生偏差。在这里,我们研究了使用GCaMP6s进行体内钙成像是否可以作为一种替代方法。我们发现,通过在炎症性疼痛小鼠模型中进行体内成像,可以在第四腰段背根神经节(L4 DRG)中观察到自发活动的钙瞬变。在发炎部位和DRG之间的神经上应用利多卡因,可以使自发放电沉默,并揭示自发活动神经元的真实钙基线水平。我们利用这些数据训练了一种机器学习算法,以预测神经元何时自发活动。我们表明,我们的算法在两种不同的疼痛模型中都是准确的:足底注射完全弗氏佐剂和抗原诱导的关节炎,相对于经验丰富的观察者的目视检查,准确率分别为90.0%±1.2和85.9%±2.1。该算法还可以在使用不同显微镜配置的不同实验室进行的成像实验中检测神经元活动(准确率=94.0%±2.2)。我们得出结论,体内钙成像可用于评估感觉神经元的自发活动,并提供一个谷歌协作笔记本,以便任何人都能轻松访问我们的新型分析工具,用于评估其自身成像设置中的神经元自发活动。