AUTHOR=Zhou Chenxing , Huang ShengSheng , Liang Tuo , Jiang Jie , Chen Jiarui , Chen Tianyou , Chen Liyi , Sun Xuhua , Zhu Jichong , Wu Shaofeng , Ye Zhen , Guo Hao , Chen Wenkang , Liu Chong , Zhan Xinli TITLE=Machine learning-based clustering in cervical spondylotic myelopathy patients to identify heterogeneous clinical characteristics JOURNAL=Frontiers in Surgery VOLUME=9 YEAR=2022 URL=https://www.frontiersin.org/journals/surgery/articles/10.3389/fsurg.2022.935656 DOI=10.3389/fsurg.2022.935656 ISSN=2296-875X ABSTRACT=Background

Anterior cervical decompression and fusion can effectively treat cervical spondylotic myelopathy (CSM). Accurately classifying patients with CSM who have undergone anterior cervical decompression and fusion is the premise of precision medicine. In this study, we used machine learning algorithms to classify patients and compare the postoperative efficacy of each classification.

Methods

A total of 616 patients with cervical spondylotic myelopathy who underwent anterior cervical decompression and fusion were enrolled. Unsupervised machine learning algorithms (UMLAs) were used to cluster subjects according to similar clinical characteristics. Then, the results of clustering were visualized. The surgical outcomes were used to verify the accuracy of machine learning clustering.

Results

We identified two clusters in these patients who had significantly different baseline clinical characteristics, preoperative complications, the severity of neurological symptoms, and the range of decompression required for surgery. UMLA divided the CSM patients into two clusters according to the severity of their illness. The repose to surgical treatment between the clusters was significantly different.

Conclusions

Our results showed that UMLA could be used to rationally classify a heterogeneous cohort of CSM patients effectively, and thus, it might be used as the basis for a data-driven platform for identifying the cluster of patients who can respond to a particular treatment method.