Phase-augmented deep learning for cell segmentation in wrapped quantitative phase images

LC-R 720 Spatial Light Modulators
Deep Learning / Neuronal Network
Published on:
Authors: Don Bonifacio, Laterriean M. Minaya, Xuemei Chen, Yuanwei Zhang, and Xuan Liu
Abstract:

Understanding cell adhesion and detachment is crucial for advancing disease diagnosis, treatment, and biomaterial development. Optical phase imaging techniques enable continuous, label-free observation of cells undergoing dynamic processes, including cell adhesion and detachment. To quantitatively study these processes with single-cell precision, accurate cell segmentation from phase images is essential. However, it is challenging to perform cell segmentation in phase images because of phase-wrapping artifacts. In this study, we developed a phase-augmented deep learning approach for cell segmentation in wrapped quantitative phase images. We acquired phase images from modulated optically computer phase microscopy (M-OCPM), a novel imaging technology recently developed in our laboratory. We trained a neural network with U-Net architecture to perform cell segmentation. The novelty of our method lies in the data augmentation strategy that introduces global phase shifts to the input images, enabling the network to distinguish true morphological features from phase-wrapping artifacts. It results in improved segmentation accuracy and eliminates the need for unwrapping. With the phase-augmented U-Net segmentation, we performed a quantitative analysis of cell morphology during cell detachment, highlighting the value of deep learning segmentation for studying dynamic cellular processes.

Open Access

Publication: Biomedical Optics Express
Issue/Year: Biomed. Opt. Express 16, 2835-2846 (2025)
DOI: 10.1364/BOE.566950
Link: https://doi.org/10.1364/BOE.566950

Related Papers

PLUTO / PLUTO-2 Spatial Light Modulators
Authors:Erkhembaatar Dashdavaa, Erdenebayar Bayarsaikhan, Munkh-Uchral Erdenebat, Jae-Yeol Cha, Jae-Won Lee, Jin-Hyeok Seo, Hyeon-Su Jeong, Min-Seok Kim, Ji-Sub Park, and Hak-Rin Kim

Dynamic eyebox expansion in holographic near-eye displays via active switching quarter-waveplate geometric phase prisms

Applications: AR/VR/MR / Holographic Display,Deep Learning / Neuronal Network,Digital-/ Computer Holography/ CGH
LETO / LETO-3 Spatial Light Modulators
Authors:Tianlong Man, Yuwen Zhang, Yuchen Wu, Zhiqing Zhang, Hongqiang Zhou, Liyun Zhong, and Yuhong Wan

Three-dimensional neural network driving self-interference digital holography enables high-fidelity, non-scanning volumetric fluorescence microscopy

Applications: Beam Shaping / Beam Steering,Deep Learning / Neuronal Network,Microscopy
PLUTO / PLUTO-2 Spatial Light Modulators
Authors:Yuwei Jiang, Wenyu Yang, Yongxin Zhu, and Zunkai Huang

High-Quality Phase-Only Holography via Frequency-Domain Hybrid Encoding and Multi-Scale Complex Attention

Applications: Deep Learning / Neuronal Network,Digital-/ Computer Holography/ CGH
PLUTO / PLUTO-2 Spatial Light Modulators
Authors:Chuncheng Zhang, Zhaoxuan Hu, Tianting Zhong, Haofan Huang, Ji Liang, Yu Wang, Tingting Liu, Zheyi Yao, Qian Chen, Puxiang Lai, and Xiubao Sui

Unlocking high-frequency speckle details via relative frequency learning for robust imaging through scattering media

Applications: Deep Learning / Neuronal Network,Turbid-/ Opaque Media /Multi Scattering
PLUTO / PLUTO-2 Spatial Light Modulators
Authors:Hyunmin Ban, Wenbin Zhou, Xiangyu Meng, and Yifan Evan Peng

Multi-color compressive hologram synthesis with learned wave propagation

Applications: AR/VR/MR / Holographic Display,Deep Learning / Neuronal Network,Digital-/ Computer Holography/ CGH
PLUTO / PLUTO-2 Spatial Light Modulators
Authors:Shiva Shankar Mutupuri, MD. Haider Ansari, Satish Anamalamudi, Ravi Kumar, Shashi Prabhakar, and Salla Gangi Reddy

Higher-Order Spatial Mode Detection Leveraging Deep Learning on Random Optical Patterns

Applications: Deep Learning / Neuronal Network,Higher Order Modes / Optical Vortex / OAM,Optical Communication,Turbid-/ Opaque Media /Multi Scattering
LC 2012 Spatial Light Modulators
Authors:J. Arriaga Hernández, B. Cuevas Otahola, A. Diaz Nayotl, A. Jaramillo Núñez, A. Pérez Villegas, O. Valenzuela b

Machine learning K-means algorithm applied to wavefront sensing in Bi-Ronchi/Hartmann tests with SLM

Applications: Deep Learning / Neuronal Network
ERIS PLUTO / PLUTO-2 Spatial Light Modulators
Authors:Guillaume Noetinger, Tim Tuuva, Romain Fleury

Tutorial: A practical guide to the alignment of defocused spatial light modulators for fast diffractive neural networks

Applications: Complex Modulation,Deep Learning / Neuronal Network,Optical Computing / Quantum Optics
PLUTO / PLUTO-2 Spatial Light Modulators
Authors:Yaping Tian, Yuhan Zhou, Shiyi Lu, Liming Zhu, Khian-Hooi Chew, Rui-Pin Chen

Mueller matrix-based deep neural network for adaptive reconstruction of orthogonal polarization components of a vector beam transmitted through a highly scattering medium

Applications: Deep Learning / Neuronal Network,Polarization Generation,Turbid-/ Opaque Media /Multi Scattering
LC 2012 Spatial Light Modulators
Authors:Ruidong Li, Caihua Zhang, Kejian Zhu, Zheng Huang, Conghe Wang, Shukai Wu, and Hongwei Chen

Implementation of fully connected layers in optical convolutional neural networks for pre-sensor computing

Applications: Deep Learning / Neuronal Network,Optical Computing / Quantum Optics
PLUTO / PLUTO-2 Spatial Light Modulators
Authors:Ruitao Wu, Juncheng Fang, Rui Pan, Rongyi Lin, Kaiyuan Li, Ting Lei, Luping Du, Xiaocong Yuan

Physical Interpretation of Diffractive Optical Networks for High-Dimensional Vortex Mode Sorting

Applications: Deep Learning / Neuronal Network,Higher Order Modes / Optical Vortex / OAM
ERIS Spatial Light Modulators
Authors:Ying Zhao, Hao Wang, Dan Li, Ping Yan, and Qirong Xiao

In-situ forward sparse training of large-scale optical neural networks

Applications: Deep Learning / Neuronal Network,Optical Communication
PLUTO / PLUTO-2 Spatial Light Modulators
Authors:Qian Zhang, Yu Miao, Jiali Sun, Yuan Sui, Stefan Rothe, and Juergen W. Czarske

Digital design of mode decomposition systems for multimode fibers using physics-informed neural network

Applications: Adaptive Optics / Wavefront Control,Deep Learning / Neuronal Network,Turbid-/ Opaque Media /Multi Scattering
PLUTO / PLUTO-2 Spatial Light Modulators
Authors:Chenliang Chang, Chenzhou Zhao, Bo Dai, Qi Wang, Dawei Zhang, Songlin Zhuang, and Chao Ping Chen

Memory-Reduced Convolutional Neural Network for Fast Phase Hologram Generation

Applications: Deep Learning / Neuronal Network,Digital-/ Computer Holography/ CGH
GAEA / GAEA-2 / GAEA-C Spatial Light Modulators
Authors:Chuxuan Huang, Yue Huang, and Manhua Liu

NeuHolo: non-interferometric quantitative single-shot holographic imaging for 3D metrology using neural fields

Applications: Deep Learning / Neuronal Network,Phase Measurement / Phase Retrieval
PLUTO / PLUTO-2 Spatial Light Modulators
Authors:Yangjun Li, Likai Cheng, Jianming Gao, Banlian Xu, Leihong Zhang, and Dawei Zhang

Computational ghost imaging of atmospheric turbulence based on a single variable convolution kernel

Applications: Deep Learning / Neuronal Network,Imaging/ Image Processing
GAEA / GAEA-2 / GAEA-C Spatial Light Modulators
Authors:Ninghe Liu, Kexuan Liu, Yixin Yang, Yifan Peng, and Liangcai Cao

Propagation-adaptive 4K computer-generated holography using physics-constrained spatial and Fourier neural operator

Applications: AR/VR/MR / Holographic Display,Deep Learning / Neuronal Network,Digital-/ Computer Holography/ CGH
LC-R 720 Spatial Light Modulators
Authors:Yang Peng, Yin Xiao, and Wen Chen

High-fidelity optical wireless transmission in complex environments around a corner using the design of a single-layer neural network for data encoding

Applications: Deep Learning / Neuronal Network,Optical Communication,Telecom / Optical Switching / WSS
PLUTO / PLUTO-2 Spatial Light Modulators
Authors:Yangjun Li, Hangyu Zhang, Chenzhe Jiang, Leihong Zhang, and Dawei Zhang

Computational ghost imaging for atmospheric turbulence using model-driven and data-driven deep learning

Applications: Deep Learning / Neuronal Network,Imaging/ Image Processing,Turbid-/ Opaque Media /Multi Scattering
GAEA / GAEA-2 / GAEA-C Spatial Light Modulators
Authors:Kyosik Min, Myeong-Ho Choi, and Jae-Hyeung Park

Quality enhancement of computer-generated hologram without contents-dependent optimization by considering aberrations in the optical system

Applications: AR/VR/MR / Holographic Display,Deep Learning / Neuronal Network,Imaging/ Image Processing
PLUTO / PLUTO-2 Spatial Light Modulators
Authors:Youngbin Na and Do-Kyeong Ko

Tailoring orbital angular momentum entanglement through inverse design based on gradient descent

Applications: Deep Learning / Neuronal Network,Higher Order Modes / Optical Vortex / OAM,Optical Computing / Quantum Optics
PLUTO / PLUTO-2 Spatial Light Modulators
Authors:Nima Asoudegi and Mo Mojahedi

Orbital Angular Momentum Holography Using Neural Network and Camera in the Loop

Applications: Deep Learning / Neuronal Network,Higher Order Modes / Optical Vortex / OAM,Optical Communication
LC 2012 Spatial Light Modulators
Authors:Yingheng Tang, Ruiyang Chen, Minhan Lou, Jichao Fan, Cunxi Yu, Andrew Nonaka, Zhi Yao, and Weilu Gao

Optical neural engine for solving scientific partial differential equations

Applications: Deep Learning / Neuronal Network,Optical Computing / Quantum Optics
PLUTO / PLUTO-2 Spatial Light Modulators
Authors:Kenneth Chen, Anzhou Wen, Yunxiang Zhang, Praneeth Chakravarthula and Qi Sun

View synthesis for 3D computer-generated holograms using deep neural fields

Applications: AR/VR/MR / Holographic Display,Deep Learning / Neuronal Network,Digital-/ Computer Holography/ CGH