临床病理因素与机器学习算法在腮腺癌存活预测中的应用

Seung Min Park, Se-Heon Kim, E. Choi, J. Lim, Y. Koh, Y. M. Park
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引用次数: 1

摘要

背景/目的:本研究分析腮腺癌(pgc)患者综合淋巴结因素等临床病理因素对预后的影响,并利用机器学习技术构建pgc患者生存预测模型。材料与方法:共有131例PGCs患者入组研究。结果:下颈部淋巴结19例(14.5%),多发性淋巴结转移43例(32.8%)。2例(1.5%)转移至对侧LNs。6例(4.6%)出现腮腺内LNs转移,35例(26.7%)出现结外延伸(ENE)。淋巴血管侵犯(LVI) 42例(32.1%),神经周围侵犯49例(37.4%)。采用综合节点因素和决策树等临床病理因素构建机器学习预测模型,堆叠模型预测患者生存的准确率最高,分别为74%和70%。结论:低水平的LNs转移和LNR对预测PGCs患者的疾病复发和生存具有重要的预后意义。将这两个因素作为构建机器学习预测模型的重要特征。我们的机器学习模型可以相当准确地预测PGCs患者的生存。
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Clinico-pathologic Factors and Machine Learning Algorithm for Survival Prediction in Parotid Gland Cancer
Background/Objectives: This study analyzed the prognostic significance of clinico-pathologic factors including comprehensive nodal factors in parotid gland cancers (PGCs) patients and constructed a survival prediction model for PGCs patients using machine learning techniques.Materials & Methods: A total of 131 PGCs patients were enrolled in the study.Results: There were 19 cases (14.5%) of lymph nodes (LNs) at the lower neck level and 43 cases (32.8%) involved multiple level LNs metastases. There were 2 cases (1.5%) of metastases to the contralateral LNs. Intraparotid LNs metastasis was observed in 6 cases (4.6%) and extranodal extension (ENE) findings were observed in 35 cases (26.7%). Lymphovascular invasion (LVI) and perineural invasion findings were observed in 42 cases (32.1%) and 49 cases (37.4%), respectively. Machine learning prediction models were constructed using clinico-pathologic factors including comprehensive nodal factors and Decision Tree and Stacking model showed the highest accuracy at 74% and 70% for predicting patient’s survival.Conclusion: Lower level LNs metastasis and LNR have important prognostic significance for predicting disease recurrence and survival in PGCs patients. These two factors were used as important features for constructing machine learning prediction model. Our machine learning model could predict PGCs patient’s survival with a considerable level of accuracy.
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