Differentiation of Healthy Ex Vivo Bovine Tissues Using Raman Spectroscopy and Interpretable Machine Learning.

IF 2.2 3区 医学 Q2 DERMATOLOGY
Soha Yousuf, Mohamed Irfan Karukappadath, Azhar Zam
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引用次数: 0

Abstract

Objectives: Integrating machine learning with Raman spectroscopy (RS) shows strong potential for intraoperative guidance in orthopedic procedures, but limited algorithm transparency remains a barrier to clinician trust. This study aims to develop interpretable machine learning models capable of accurately classifying bovine tissue types (bone, bone marrow, fat, and muscle) relevant to orthopedic surgery by identifying key Raman biomarkers to improve model transparency.

Methods: A portable RS system equipped with a 785 nm fiber-optic probe was used to collect spectral data from excised bovine tissues, including bone, bone marrow, muscle, and fat. One-dimensional convolutional neural network (1D-CNN) and support vector machine (SVM) models were developed to classify these tissue types. The Raman spectral data were divided using a sample-based, stratified splitting strategy and evaluated across 30 independent iterations. Feature importance maps were generated for both models, and matching scores were calculated to correlate significant spectral features with known Raman biomarkers.

Results: Through feature importance analysis and matching scores generated by the 1D-CNN and SVM models, critical Raman biomarkers-including hydroxyapatite, lipids, amino acids, and collagen-were identified as essential for distinguishing between the different bovine tissue types, providing deeper insights into their molecular differences.

Conclusions: The integration of interpretable machine learning models with RS enabled accurate differentiation of bovine tissues relevant to orthopedic surgery, while enhancing model transparency through biomarker identification. Linking model predictions to biologically meaningful Raman features supports the development of RS as a reliable tool for precision-guided surgical procedures.

利用拉曼光谱和可解释机器学习的健康离体牛组织分化。
目的:将机器学习与拉曼光谱(RS)相结合在骨科手术中显示出强大的术中指导潜力,但有限的算法透明度仍然是临床医生信任的障碍。本研究旨在开发可解释的机器学习模型,通过识别关键拉曼生物标志物来提高模型透明度,从而能够准确分类与骨科手术相关的牛组织类型(骨、骨髓、脂肪和肌肉)。方法:采用配备785 nm光纤探针的便携式RS系统采集牛切除组织(包括骨、骨髓、肌肉和脂肪)的光谱数据。利用一维卷积神经网络(1D-CNN)和支持向量机(SVM)模型对这些组织类型进行分类。拉曼光谱数据使用基于样本的分层分割策略进行分割,并在30次独立迭代中进行评估。为两种模型生成特征重要性图,并计算匹配分数,将显著光谱特征与已知拉曼生物标志物相关联。结果:通过1D-CNN和SVM模型生成的特征重要性分析和匹配分数,确定了关键拉曼生物标志物(包括羟基磷灰石、脂质、氨基酸和胶原蛋白)是区分不同牛组织类型的必要条件,从而更深入地了解了它们的分子差异。结论:可解释机器学习模型与RS的集成能够准确区分与骨科手术相关的牛组织,同时通过生物标志物识别提高模型的透明度。将模型预测与具有生物学意义的拉曼特征联系起来,支持RS作为精确指导外科手术的可靠工具的发展。
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来源期刊
CiteScore
5.40
自引率
12.50%
发文量
119
审稿时长
1 months
期刊介绍: Lasers in Surgery and Medicine publishes the highest quality research and clinical manuscripts in areas relating to the use of lasers in medicine and biology. The journal publishes basic and clinical studies on the therapeutic and diagnostic use of lasers in all the surgical and medical specialties. Contributions regarding clinical trials, new therapeutic techniques or instrumentation, laser biophysics and bioengineering, photobiology and photochemistry, outcomes research, cost-effectiveness, and other aspects of biomedicine are welcome. Using a process of rigorous yet rapid review of submitted manuscripts, findings of high scientific and medical interest are published with a minimum delay.
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