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首页> 外文期刊>International journal of medical informatics >Prediction models applying machine learning to oral cavity cancer outcomes: A systematic review
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Prediction models applying machine learning to oral cavity cancer outcomes: A systematic review

机译:应用机器学习对口腔癌结果的预测模型:系统评价

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Objectives: Machine learning platforms are now being introduced into modern oncological practice for classification and prediction of patient outcomes. To determine the current status of the application of these learning models as adjunctive decision-making tools in oral cavity cancer management, this systematic review aims to summarize the accuracy of machine-learning based models for disease outcomes. Methods: Electronic databases including PubMed, Scopus, EMBASE, Cochrane Library, LILACS, SciELO, PsychINFO, and Web of Science were searched up until December 21, 2020. Pertinent articles detailing the development and accuracy of machine learning prediction models for oral cavity cancer outcomes were selected in a two-stage process. Quality assessment was conducted using the Quality in Prognosis Studies (QUIPS) tool and results of base studies were qualitatively synthesized by all authors. Outcomes of interest were malignant transformation of precancer lesions, cervical lymph node metastasis, as well as treatment response, and prognosis of oral cavity cancer. Results: Twenty-seven articles out of 950 citations identified from electronic and manual searching were included in this study. Five studies had low bias concerns on the QUIPS tool. Prediction of malignant transformation, cervical lymph node metastasis, treatment response, and prognosis were reported in three, six, eight, and eleven articles respectively. Accuracy of these learning models on the internal or external validation sets ranged from 0.85 to 0.97 for malignant transformation prediction, 0.78-0.91 for cervical lymph node metastasis prediction, 0.64-1.00 for treatment response prediction, and 0.71-0.99 for prognosis prediction. In general, most trained algorithms predicting these outcomes performed better than alternate methods of prediction. We also found that models including molecular markers in training data had better accuracy estimates for malignant transformation, treatment response, and prognosis prediction. Conclusion: Machine learning algorithms have a satisfactory to excellent accuracy for predicting three of four oral cavity cancer outcomes i.e., malignant transformation, nodal metastasis, and prognosis. However, considering the training approach of many available classifiers, these models may not be streamlined enough for clinical application currently.
机译:目标:现在正在引入机器学习平台,以进行分类和预测患者结果的现代肿瘤学实践。为了确定这些学习模型的应用当前状态,作为口腔癌症管理中的辅助决策工具,这种系统审查旨在总结基于机器学习模型的疾病结果的准确性。方法:包括PubMed,Scopus,Embase,Cochrane图书馆,Lilacs,Scielo,Psioninfo和科学网站的电子数据库被搜查到2020年12月21日。相关文章详细介绍了机器学习预测模型的口腔癌结果的发展和准确性在两阶段的过程中选择。使用预后研究(Quips)工具进行质量评估,并由所有作者定性合成基础研究的结果。兴趣的结果是对患者病变的恶性转化,宫颈淋巴结转移,以及口腔癌的治疗反应和治疗反应。结果:在本研究中包含了从电子和手动搜索中确定的950个引文中的二十七条文章。五项研究对Quips工具有低偏见问题。分别在三个,六个,八个和十一章中预测恶性转化,宫颈淋巴结转移,治疗反应和预后。对于恶性转化预测,宫颈淋巴结转移预测0.78-0.91,0.78-0.91的内部或外部验证集中的准确性范围为0.85至0.97。通常,大多数训练有素的算法预测这些结果比替代的预测方法更好。我们还发现,培训数据中包括分子标记的模型具有更好的恶性转化,治疗响应和预后预测的准确性估计。结论:机器学习算法具有令人满意的令人满意,以预测四种口腔癌结果中的三种,即恶性转化,节点转移和预后。然而,考虑到许多可用分类器的训练方法,这些模型可能无法对目前临床应用程序足够简化。

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