Institut für Physik, Universität Kassel, Heinrich-Plett-Str. 40, 34132, Kassel, Germany.
Institut für Pathologie Nordhessen, Germaniastr. 7, 34119, Kassel, Germany.
Sci Rep. 2023 Jun 8;13(1):9250. doi: 10.1038/s41598-023-36155-8.
In the treatment of most newly discovered solid cancerous tumors, surgery remains the first treatment option. An important factor in the success of these operations is the precise identification of oncological safety margins to ensure the complete removal of the tumor without affecting much of the neighboring healthy tissue. Here we report on the possibility of applying femtosecond Laser-Induced Breakdown Spectroscopy (LIBS) combined with Machine Learning algorithms as an alternative discrimination technique to differentiate cancerous tissue. The emission spectra following the ablation on thin fixed liver and breast postoperative samples were recorded with high spatial resolution; adjacent stained sections served as a reference for tissue identification by classical pathological analysis. In a proof of principle test performed on liver tissue, Artificial Neural Networks and Random Forest algorithms were able to differentiate both healthy and tumor tissue with a very high Classification Accuracy of around 0.95. The ability to identify unknown tissue was performed on breast samples from different patients, also providing a high level of discrimination. Our results show that LIBS with femtosecond lasers is a technique with potential to be used in clinical applications for rapid identification of tissue type in the intraoperative surgical field.
在大多数新发现的实体癌肿瘤的治疗中,手术仍然是首选治疗方案。这些手术成功的一个重要因素是精确识别肿瘤学安全边界,以确保在不影响大量邻近健康组织的情况下完全切除肿瘤。在这里,我们报告了应用飞秒激光诱导击穿光谱(LIBS)结合机器学习算法作为替代鉴别技术来区分癌组织的可能性。使用高空间分辨率记录了在薄固定肝和乳腺术后样本上进行消融后的发射光谱;相邻的染色切片作为通过经典病理分析进行组织识别的参考。在对肝组织进行的原理验证测试中,人工神经网络和随机森林算法能够以接近 0.95 的高分类准确率区分健康组织和肿瘤组织。在来自不同患者的乳腺样本上进行了识别未知组织的能力测试,也提供了很高的区分度。我们的结果表明,飞秒激光的 LIBS 是一种具有潜在应用于临床应用的技术,可用于在术中手术领域快速识别组织类型。