Rapid, label-free histopathological diagnosis of liver cancer based on Raman spectroscopy and deep learning.
Liping HuangHongwei SunLiangbin SunKeqing ShiYuzhe ChenXueqian RenYuancai GeDanfeng JiangXiaohu LiuWolfgang KnollQingwen ZhangYi WangPublished in: Nature communications (2023)
Biopsy is the recommended standard for pathological diagnosis of liver carcinoma. However, this method usually requires sectioning and staining, and well-trained pathologists to interpret tissue images. Here, we utilize Raman spectroscopy to study human hepatic tissue samples, developing and validating a workflow for in vitro and intraoperative pathological diagnosis of liver cancer. We distinguish carcinoma tissues from adjacent non-tumour tissues in a rapid, non-disruptive, and label-free manner by using Raman spectroscopy combined with deep learning, which is validated by tissue metabolomics. This technique allows for detailed pathological identification of the cancer tissues, including subtype, differentiation grade, and tumour stage. 2D/3D Raman images of unprocessed human tissue slices with submicrometric resolution are also acquired based on visualization of molecular composition, which could assist in tumour boundary recognition and clinicopathologic diagnosis. Lastly, the potential for a portable handheld Raman system is illustrated during surgery for real-time intraoperative human liver cancer diagnosis.
Keyphrases
- raman spectroscopy
- deep learning
- label free
- endothelial cells
- gene expression
- induced pluripotent stem cells
- convolutional neural network
- pluripotent stem cells
- minimally invasive
- mass spectrometry
- squamous cell carcinoma
- patients undergoing
- acute coronary syndrome
- climate change
- machine learning
- atrial fibrillation
- electronic health record