自动膜片钳系统密封状态的预测模型

Sheng-An Yang, King Wai Chiu Lai
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引用次数: 2

摘要

膜片钳是电生理学的基础技术,为分析离子通道的生理活动提供了依据。基底膜形成过程是保证记录条件的重要因素。该过程通过减少移液器尖端与细胞膜之间的漏电流,有助于监测生物离子通道电流。虽然自动化膜片钳系统正在蓬勃发展,但根据经验值得出的标准的实施不可避免地会随机影响千兆欧姆密封的成功。本文讨论了在gigasseal形成过程中,bath电流与seal电流之间的密封条件。将细胞膜对移液管尖端的密封极限作为密封电流的临界点。提出了一种基于临界点的预测模型来优化超密封层的密封电流阈值。设计并开发了具有预测模型(PM-APCS)的自动膜片钳系统,用于收集整个细胞电压钳记录。在开发过程中,采用HEK 293细胞对该方法进行验证。成形术成功率达95.9%,大大提高了现有人工或自动成形术的成功率。总的来说,我们的发现为理解密封流的机制提供了重要的见解。该预测模型具有加速各种电生理自动化系统应用的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Predictive Model of Seal Condition in Automated Patch Clamp System
Patch clamp, the fundamental technique in electrophysiology, provides evidence for analyzing physiological activities of ion channels. The gigaseal formation process is an essential factor for guaranteeing recording condition. This process contributes to monitor biological ion channel currents by reducing the leakage current between pipette tip and cell membrane. While automated patch clamp systems are booming, implementation of criteria derived from empirical values inevitably randomizes the success of giga-ohm seal. In this paper, we have addressed the seal condition between the bath current and the seal current in the gigaseal formation process. The sealing limit of cell membrane to pipette tip was indicated as the critical point of seal current. A predictive model based on the critical point has been proposed to optimize the threshold of the seal current for gigaseal formation. An automated patch clamp system with the predictive model (PM-APCS) has been designed and developed to harvest whole cell voltage clamp recordings. In the development, HEK 293 cells were employed for the validation of the method. The success rate of gigaseal formation was 95.9%, which could greatly advance the exiting manual or automatic methods. Overall, our findings provide important insights for the understanding of the mechanism of seal current. The predictive model has the potential to accelerate the application of various automated systems for electrophysiology.
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