Seong Baekcheon, Kim Woovin, Kim Younghun, Hyun Kyung-A, Jung Hyo-Il, Lee Jong-Seok, Yoo Jeonghoon, Joo Chulmin
Department of Mechanical Engineering, Yonsei University, Seoul, 03722, Republic of Korea.
The DABOM Inc, Seoul, 03722, Republic of Korea.
Light Sci Appl. 2023 Nov 13;12(1):269. doi: 10.1038/s41377-023-01300-5.
Several image-based biomedical diagnoses require high-resolution imaging capabilities at large spatial scales. However, conventional microscopes exhibit an inherent trade-off between depth-of-field (DoF) and spatial resolution, and thus require objects to be refocused at each lateral location, which is time consuming. Here, we present a computational imaging platform, termed E2E-BPF microscope, which enables large-area, high-resolution imaging of large-scale objects without serial refocusing. This method involves a physics-incorporated, deep-learned design of binary phase filter (BPF) and jointly optimized deconvolution neural network, which altogether produces high-resolution, high-contrast images over extended depth ranges. We demonstrate the method through numerical simulations and experiments with fluorescently labeled beads, cells and tissue section, and present high-resolution imaging capability over a 15.5-fold larger DoF than the conventional microscope. Our method provides highly effective and scalable strategy for DoF-extended optical imaging system, and is expected to find numerous applications in rapid image-based diagnosis, optical vision, and metrology.
几种基于图像的生物医学诊断需要在大空间尺度上具备高分辨率成像能力。然而,传统显微镜在景深(DoF)和空间分辨率之间存在固有的权衡,因此需要在每个横向位置对物体重新聚焦,这很耗时。在此,我们提出了一种计算成像平台,称为端到端带通滤波器(E2E-BPF)显微镜,它能够对大规模物体进行大面积、高分辨率成像,而无需串行重新聚焦。该方法涉及一种结合物理的、深度学习设计的二元相位滤波器(BPF)和联合优化的反卷积神经网络,它们共同在扩展的深度范围内产生高分辨率、高对比度的图像。我们通过数值模拟以及对荧光标记的珠子、细胞和组织切片的实验来演示该方法,并展示了比传统显微镜大15.5倍的景深下的高分辨率成像能力。我们的方法为扩展景深的光学成像系统提供了高效且可扩展的策略,有望在基于图像的快速诊断、光学视觉和计量学中找到众多应用。