Lee Moosung, Kunzi Marina, Neurohr Gabriel, Lee Sung Sik, Park YongKeun
Department of Physics, Korea Advanced Institute of Science and Technology (KAIST), Daejeon, 34141, Republic of Korea.
KAIST Institute for Health Science and Technology, KAIST, Daejeon 34141, Republic of Korea.
Biomed Opt Express. 2023 Aug 10;14(9):4567-4578. doi: 10.1364/BOE.498475. eCollection 2023 Sep 1.
The precise, quantitative evaluation of intracellular organelles in three-dimensional (3D) imaging data poses a significant challenge due to the inherent constraints of traditional microscopy techniques, the requirements of the use of exogenous labeling agents, and existing computational methods. To counter these challenges, we present a hybrid machine-learning framework exploiting correlative imaging of 3D quantitative phase imaging with 3D fluorescence imaging of labeled cells. The algorithm, which synergistically integrates a random-forest classifier with a deep neural network, is trained using the correlative imaging data set, and the trained network is then applied to 3D quantitative phase imaging of cell data. We applied this method to live budding yeast cells. The results revealed precise segmentation of vacuoles inside individual yeast cells, and also provided quantitative evaluations of biophysical parameters, including volumes, concentration, and dry masses of automatically segmented vacuoles.
由于传统显微镜技术的固有局限性、使用外源性标记剂的要求以及现有计算方法的限制,在三维(3D)成像数据中对细胞内细胞器进行精确的定量评估面临重大挑战。为应对这些挑战,我们提出了一种混合机器学习框架,该框架利用3D定量相成像与标记细胞的3D荧光成像的相关成像技术。该算法将随机森林分类器与深度神经网络协同集成,使用相关成像数据集进行训练,然后将训练后的网络应用于细胞数据的3D定量相成像。我们将此方法应用于活的出芽酵母细胞。结果显示了单个酵母细胞内液泡的精确分割,还提供了对自动分割液泡的生物物理参数的定量评估,包括体积、浓度和干质量。