基于人工智能的高精度菌落提取与分离系统OA
Artificial intelligence-enabled high-precision colony extraction and isolation system
标准菌悬液在微生物诊断中具有重要意义.传统制备方法依赖人工操作,存在重复性差、效率低及生物安全隐患等问题.本研究提出一种融合大视野成像与人工智能技术的高精度自动化菌落提取分选系统,实现菌落智能筛查与定位.首先,开发了大视野成像系统,可采集90 mm培养皿高分辨图像,物理分辨率达13.2 μm,成像速度为13帧/秒;其次,应用人工智能技术实现菌落自动识别与定位,支持筛选直径为1.9~2.3 mm的目标菌落;接着设计三轴运动控制平台,配合路径规划算法实现菌落高效提取,采用电动移液器进行精准菌落采集;同时开发菌悬液浓度测量模块,以650 nm激光二极管为光源,实现0.01麦氏浓度(MCF)的测量精度.最终通过大肠杆菌悬液制备验证系统性能,具体为:经17小时培养后分4次提取大肠杆菌,达到系统设定目标浓度.该工作有望实现微生物样本的快速精准制备,显著缩短检测周期,减轻医务人员工作负担.
Standard bacterial suspensions play a crucial role in microbiological diagnosis.Traditional prepar-ation methods,which rely heavily on manual operations,face challenges such as poor reproducibility,low ef-ficiency,and biosafety concerns.In this study,we propose a high-precision automated colony extraction and separation system that combines large-field imaging and artificial intelligence(AI)to facilitate intelligent screening and localization of colonies.Firstly,a large-field imaging system was developed to capture high-resolution images of 90 mm Petri dishes,achieving a physical resolution of 13.2 μm and an imaging speed of 13 frames per second.Subsequently,AI technology was employed for the automatic recognition and localiza-tion of colonies,enabling the selection of target colonies with diameters ranging from 1.9 to 2.3 mm.Next,a three-axis motion control platform was designed,accompanied by a path planning algorithm for the efficient extraction of colonies.An electronic pipette was employed for accurate colony collection.Additionally,a bacterial suspension concentration measurement module was developed,incorporating a 650 nm laser diode as the light source,achieving a measurement accuracy of 0.01 McFarland concentration(MCF).Finally,the system's performance was validated through the preparation of an Esckerichia coli(E.coli)suspension.After 17 hours of cultivation,E.coli was extracted four times,achieving the target concentration set by the system.This work is expected to enable rapid and accurate microbial sample preparation,significantly reducing de-tection cycles and alleviating the workload of healthcare personnel.
赵旭峰;贾志强;陈维学;胡鹏涛;苏新然;李俊霖;葛明锋;董文飞
中国科学院苏州生物工程技术研究所生物材料与干细胞研究室,江苏苏州 215163中国科学院苏州生物工程技术研究所生物材料与干细胞研究室,江苏苏州 215163||长春理工大学机电工程学院,吉林长春 130022长春理工大学机电工程学院,吉林长春 130022长春理工大学机电工程学院,吉林长春 130022长春理工大学机电工程学院,吉林长春 130022长春理工大学机电工程学院,吉林长春 130022中国科学院苏州生物工程技术研究所生物材料与干细胞研究室,江苏苏州 215163||郑州中科生物医学工程技术研究院,河南郑州 450001||济南国科医工科技发展有限公司,山东济南 250001中国科学院苏州生物工程技术研究所生物材料与干细胞研究室,江苏苏州 215163||长春理工大学机电工程学院,吉林长春 130022
医药卫生
人工智能菌落提取与分离大视场成像自动化
artificial intelligencecolony extraction and isolationlarge-field imagingautomation
《中国光学(中英文)》 2026 (1)
190-204,15
国家重点研发项目(No.2022YFC2406200)中国科学院科研仪器设备研制项目(No.YJKYYQ20200038)中国科学院重点部署项目(No.YJKYYQ20210032)Supported by National Key R&D Program of China(No.2022YFC2406200)Scientific Instrument and Equip-ment Development Projects of Chinese Academy of Sciences(No.YJKYYQ20200038)Key Deployment Project of Chinese Academy of Sciences(No.YJKYYQ20210032)
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