Princess Margaret Cancer Center, Toronto, Ontario, Canada.
Polytechnique Montreal, Department of Engineering Physics, Montreal, Quebec, Canada.
J Biomed Opt. 2023 May;28(5):057003. doi: 10.1117/1.JBO.28.5.057003. Epub 2023 May 31.
Orthopedic surgery is frequently performed but currently lacks consensus and availability of ideal guidance methods, resulting in high variability of outcomes. Misdirected insertion of surgical instruments can lead to weak anchorage and unreliable fixation along with risk to critical structures including the spinal cord. Current methods for surgical guidance using conventional medical imaging are indirect and time-consuming with unclear advantages.
The purpose of this study was to investigate the potential of intraoperative near-infrared Raman spectroscopy (RS) combined with machine learning in guiding pedicular screw insertion in the spine.
A portable system equipped with a hand-held RS probe was used to make fingerprint measurements on freshly excised porcine vertebrae, identifying six tissue types: bone, spinal cord, fat, cartilage, ligament, and muscle. Supervised machine learning techniques were used to train-and test on independent hold-out data subsets-a six-class model as well as two-class models engineered to distinguish bone from soft tissue. The two-class models were further tested using spectral fingerprint measurements made during intra-pedicular drilling in a porcine spine model.
The five-class model achieved accuracy in distinguish all six tissue classes when applied onto a hold-out testing data subset. The binary classifier detecting bone versus soft tissue (all soft tissue or spinal cord only) yielded 100% accuracy. When applied onto measurements performed during interpedicular drilling, the soft tissue detection models correctly detected all spinal canal breaches.
We provide a foundation for RS in the orthopedic surgical guidance field. It shows that RS combined with machine learning is a rapid and accurate modality capable of discriminating tissues that are typically encountered in orthopedic procedures, including pedicle screw placement. Future development of integrated RS probes and surgical instruments promises better guidance options for the orthopedic surgeon and better patient outcomes.
矫形外科手术经常进行,但目前缺乏共识和理想的指导方法,导致结果的可变性很高。手术器械的插入方向错误会导致锚固力减弱和固定不可靠,同时还会对包括脊髓在内的关键结构造成风险。目前使用常规医学成像进行手术引导的方法是间接的,既费时又费力,并且优势不明确。
本研究旨在探讨术中近红外拉曼光谱(RS)结合机器学习在脊柱经皮螺钉置入术中的指导潜力。
使用配备手持式 RS 探头的便携式系统对新鲜切除的猪椎骨进行指纹测量,识别出六种组织类型:骨、脊髓、脂肪、软骨、韧带和肌肉。使用监督机器学习技术对独立的保留数据子集进行训练和测试-一个六类模型以及两个旨在区分骨与软组织的二类模型。使用猪脊柱模型经皮钻取过程中的光谱指纹测量值进一步测试了这两个二类模型。
当应用于保留的测试数据子集时,五分类模型在区分所有六个组织类别方面达到了 100%的准确率。用于检测骨与软组织(所有软组织或仅脊髓)的二分类器的准确率为 100%。当应用于经皮钻取过程中的测量值时,软组织检测模型正确检测到所有椎管破裂。
我们为 RS 在矫形外科手术指导领域提供了基础。结果表明,RS 与机器学习相结合是一种快速、准确的方法,能够区分矫形手术中通常遇到的组织,包括经皮螺钉放置。集成 RS 探头和手术器械的未来发展有望为矫形外科医生提供更好的指导选择,并改善患者的治疗效果。