Zhang Linyi, Wang Ling, Yang Shanshan, He Kangxin, Bao Di, Xu Mingen
Hangzhou Dianzi University, Automation College, Hangzhou, Zhejiang, China.
Zhejiang Provincial Key Laboratory of Medical Information and Biological 3D Printing, Hangzhou, Zhejiang, China.
Biomed Opt Express. 2023 Mar 29;14(4):1703-1717. doi: 10.1364/BOE.486666. eCollection 2023 Apr 1.
Patient-derived organoids (PDOs) serve as excellent tools for personalized drug screening to predict clinical outcomes of cancer treatment. However, current methods for efficient quantification of drug response are limited. Herein, we develop a method for label-free, continuous tracking imaging and quantitative analysis of drug efficacy using PDOs. A self-developed optical coherence tomography (OCT) system was used to monitor the morphological changes of PDOs within 6 days of drug administration. OCT image acquisition was performed every 24 h. An analytical method for organoid segmentation and morphological quantification was developed based on a deep learning network (EGO-Net) to simultaneously analyze multiple morphological organoid parameters under the drug's effect. Adenosine triphosphate (ATP) testing was conducted on the last day of drug treatment. Finally, a corresponding aggregated morphological indicator (AMI) was established using principal component analysis (PCA) based on the correlation analysis between OCT morphological quantification and ATP testing. Determining the AMI of organoids allowed quantitative evaluation of the PDOs responses to gradient concentrations and combinations of drugs. Results showed that there was a strong correlation (correlation coefficient >90%) between the results using the AMI of organoids and those from ATP testing, which is the standard test used for bioactivity measurement. Compared with single-time-point morphological parameters, the introduction of time-dependent morphological parameters can reflect drug efficacy with improved accuracy. Additionally, the AMI of organoids was found to improve the efficiency of 5-fluorouracil(5FU) against tumor cells by allowing the determination of the optimum concentration, and the discrepancies in response among different PDOs using the same drug combinations could also be measured. Collectively, the AMI established by OCT system combined with PCA could quantify the multidimensional morphological changes of organoids under the drug's effect, providing a simple and efficient tool for drug screening in PDOs.
患者来源的类器官(PDO)是用于个性化药物筛选以预测癌症治疗临床结果的优秀工具。然而,目前用于有效量化药物反应的方法有限。在此,我们开发了一种使用PDO进行无标记、连续跟踪成像和药物疗效定量分析的方法。使用自行开发的光学相干断层扫描(OCT)系统监测给药6天内PDO的形态变化。每24小时进行一次OCT图像采集。基于深度学习网络(EGO-Net)开发了一种类器官分割和形态定量分析方法,以同时分析药物作用下的多个类器官形态参数。在药物治疗的最后一天进行三磷酸腺苷(ATP)测试。最后,基于OCT形态定量与ATP测试之间的相关性分析,使用主成分分析(PCA)建立了相应的综合形态指标(AMI)。确定类器官的AMI可以定量评估PDO对梯度浓度和药物组合的反应。结果表明,使用类器官AMI的结果与用于生物活性测量的标准测试ATP测试的结果之间存在强相关性(相关系数>90%)。与单时间点形态参数相比,引入时间依赖性形态参数可以更准确地反映药物疗效。此外,发现类器官的AMI通过确定最佳浓度提高了5-氟尿嘧啶(5FU)对肿瘤细胞的疗效,并且还可以测量使用相同药物组合的不同PDO之间的反应差异。总体而言,由OCT系统结合PCA建立的AMI可以量化药物作用下类器官的多维形态变化,为PDO中的药物筛选提供了一种简单有效的工具。