Jia Mingzheng, Li Liang, Xiong Baolin, Feng Le, Cheng Wenbo, Dong Wen-Fei
School of Biomedical Engineering (Suzhou), Division of Life Sciences and Medicine, University of Science and Technology of China, Hefei 230026, China.
Suzhou Institute of Biomedical Engineering and Technology, Chinese Academy of Sciences, Suzhou 215163, China.
Bioengineering (Basel). 2023 Sep 12;10(9):1079. doi: 10.3390/bioengineering10091079.
Quadrupole mass spectrometers (QMS) are widely used for clinical diagnosis and chemical analysis. To obtain the best experimental results, mass spectrometers must be calibrated to an ideal setting before use. However, tuning the current QMS is challenging. Traditional tuning techniques possess low automation levels and rely primarily on skilled engineers. Therefore, in this study, we propose an innovative auto-tuning algorithm for QMS based on the improved particle swarm optimization (PSO) algorithm to automatically find the optimal solution of QMS parameters and make the QMS reach the optimal state. The improved PSO algorithm is combined with simulated annealing, multiple inertia weights, dynamic boundaries, and other methods to prevent the traditional PSO algorithm from the issue of a local optimal solution and premature convergence. According to the characteristics of the mass spectrum peaks, a termination function is proposed to simplify the termination conditions of the PSO algorithm and further improve the automation level of the mass spectrometer. The results of auto-calibration testing of resolution and mass axis show that both resolution and mass axis calibration could effectively meet the requirements of mass spectrometry experiments. By the experiment of auto-optimization testing of lens and ion source parameters, these parameters were all in the vicinity of the optimal solution, which achieved the expected performance. Through numerous experiments, the reproducibility of the algorithm was established as meeting the auto-tuning function of the QMS. The proposed method can automatically tune the mass spectrometer from its non-optimal condition to the optimal one, which can effectively reduce the tuning difficulty of QMS.
四极杆质谱仪(QMS)广泛应用于临床诊断和化学分析。为了获得最佳实验结果,质谱仪在使用前必须校准到理想设置。然而,调整当前的QMS具有挑战性。传统的调整技术自动化程度低,主要依赖熟练的工程师。因此,在本研究中,我们提出了一种基于改进粒子群优化(PSO)算法的QMS创新自动调整算法,以自动找到QMS参数的最优解,使QMS达到最优状态。改进的PSO算法结合了模拟退火、多惯性权重、动态边界等方法,以防止传统PSO算法出现局部最优解和早熟收敛问题。根据质谱峰的特征,提出了一种终止函数,以简化PSO算法的终止条件,进一步提高质谱仪的自动化水平。分辨率和质量轴的自动校准测试结果表明,分辨率和质量轴校准均能有效满足质谱实验的要求。通过透镜和离子源参数的自动优化测试实验,这些参数均在最优解附近,达到了预期性能。通过大量实验,确定了该算法的重现性满足QMS的自动调整功能。所提出的方法可以将质谱仪从非最优状态自动调整到最优状态,有效降低了QMS的调整难度。