Wang Haoyuan, Wu Difeng, Zheng Miao, Zhang Zuoshuai, Zhang Weina, Di Jianglei, Zhong Liyun
Guangdong University of Technology, Institute of Advanced Photonics Technology, School of Information Engineering, Guangzhou, China.
Guangdong University of Technology, Ministry of Education of China, Key Laboratory of Photonic Technology for Integrated Sensing and Communication, Guangzhou, China.
J Biomed Opt. 2025 Sep;30(9):096501. doi: 10.1117/1.JBO.30.9.096501. Epub 2025 Sep 2.
Accurate cell classification is essential in disease diagnosis and drug screening. Three-dimensional (3D) voxel models derived from holographic tomography effectively capture the internal structural features of cells, enhancing classification accuracy. However, their high dimensionality leads to significant increases in data volume, computational complexity, processing time, and hardware costs, which limit their practical applicability.
We aim to develop an efficient and accurate cell classification method using 3D refractive index (RI) point cloud data obtained from holographic tomography, focusing on reducing computational complexity without sacrificing classification performance.
We transformed 3D RI voxel data into point cloud representations using segmented equilibrium sampling to substantially decrease data volume while retaining crucial structural features. A deep learning model, named RI-PointNet++, was then specifically designed for RI point cloud data to enhance feature extraction and enable precise cell classification.
In experiments classifying the viability of HeLa cells, the proposed method achieved a classification accuracy of 93.5%, significantly outperforming conventional two-dimensional models (87.0%). Furthermore, compared with traditional 3D voxel-based models, our method reduced computational complexity by over 99%, with floating-point operations of only 1.49 G, thus enabling efficient performance even on central processing unit (CPU) hardware.
Our proposed method provides an innovative, lightweight solution for 3D cell classification, highlighting the considerable potential of point cloud-based approaches in biomedical research applications.
准确的细胞分类在疾病诊断和药物筛选中至关重要。从全息断层扫描中获取的三维(3D)体素模型能够有效地捕捉细胞的内部结构特征,提高分类准确性。然而,其高维度导致数据量、计算复杂度、处理时间和硬件成本大幅增加,限制了它们的实际应用。
我们旨在开发一种高效准确的细胞分类方法,该方法使用从全息断层扫描中获得的三维折射率(RI)点云数据,重点是在不牺牲分类性能的情况下降低计算复杂度。
我们使用分段平衡采样将三维RI体素数据转换为点云表示,以在保留关键结构特征的同时大幅减少数据量。然后专门为RI点云数据设计了一个名为RI-PointNet++的深度学习模型,以增强特征提取并实现精确的细胞分类。
在对HeLa细胞活力进行分类的实验中,所提出的方法实现了93.5%的分类准确率,显著优于传统的二维模型(87.0%)。此外,与传统的基于三维体素的模型相比,我们的方法将计算复杂度降低了99%以上,浮点运算仅为1.49 G,因此即使在中央处理器(CPU)硬件上也能实现高效性能。
我们提出的方法为三维细胞分类提供了一种创新的轻量级解决方案,突出了基于点云的方法在生物医学研究应用中的巨大潜力。