Matches in SemOpenAlex for { <https://semopenalex.org/work/W4386447029> ?p ?o ?g. }
- W4386447029 abstract "Abstract Background Nasopharyngeal carcinoma (NPC) is a common cancer of the head and neck, and the eye is a common metastatic site of NPC. This study aimed to use machine learning (ML) to establish a clinical prediction model for ocular metastasis (OM) in NPC patients. Methods We retrospectively collected clinical data from 1,855 patients with NPC who were randomized to a training set and internal test set. Patients with NPC were divided into the OM group or the non-ocular metastasis (NOM) group. Independent risk factors for NPC-related hypertension risk were screened with multivariate logistic regression models. Six ML algorithms were used, including AdaBoost (AB), logistic regression (LR), random forest (RF), multilayer perceptron (MLP), bagging (BAG), and XGBoost (XGB). The training set was used to tune the model parameters to determine the final prediction model, and the test set was used to evaluate the training model. We compared the accuracy, sensitivity, area under the ROC curve, F1 score, and specificity of the models to determine the best machine-learning algorithm for predicting the probability of OM in NPC patients. In addition, a web calculator was developed to facilitate its clinical application. Results Among these six models, the AB model had the best differential diagnostic ability (F1 score = 0.773, area under the curve = 0.995, accuracy = 0.983, sensitivity = 0.833, and specificity = 0.985). Based on this model, an online web calculator was constructed to calculate the probability of OM in NPC patients to help clinicians differentially diagnose the disease. Finally, the Shapley Supplementary Interpretation library was used to screen the five most important risk factors for OM in NPC patients: TG, Cyfra 21 1, CA199, Hb, TC, and Pathology type. Conclusion We developed a risk prediction model for OM in NPC patients using ML methods and demonstrated that the AB model performed best among six ML models. This prediction model can help to identify patients with OM from NPC, provide early and individualized diagnosis and treatment plans, protect patients from OM from NPC, and minimize the burden on society." @default.
- W4386447029 created "2023-09-06" @default.
- W4386447029 creator A5002454159 @default.
- W4386447029 creator A5015642582 @default.
- W4386447029 creator A5019362135 @default.
- W4386447029 creator A5027249380 @default.
- W4386447029 creator A5028573330 @default.
- W4386447029 creator A5049904562 @default.
- W4386447029 creator A5055992794 @default.
- W4386447029 creator A5057450759 @default.
- W4386447029 creator A5058564365 @default.
- W4386447029 creator A5060584732 @default.
- W4386447029 creator A5061076734 @default.
- W4386447029 creator A5063909638 @default.
- W4386447029 creator A5077849549 @default.
- W4386447029 creator A5089520665 @default.
- W4386447029 date "2023-09-05" @default.
- W4386447029 modified "2023-10-16" @default.
- W4386447029 title "Machine-learning model of eye metastasis in nasopharyngeal carcinoma based on the AdaBoost method" @default.
- W4386447029 cites W2010861323 @default.
- W4386447029 cites W2014151629 @default.
- W4386447029 cites W2111247797 @default.
- W4386447029 cites W2159664205 @default.
- W4386447029 cites W2161706255 @default.
- W4386447029 cites W2167607846 @default.
- W4386447029 cites W2259982983 @default.
- W4386447029 cites W2346568950 @default.
- W4386447029 cites W2549637402 @default.
- W4386447029 cites W2563365569 @default.
- W4386447029 cites W2622758479 @default.
- W4386447029 cites W2768650472 @default.
- W4386447029 cites W2780059512 @default.
- W4386447029 cites W2950425319 @default.
- W4386447029 cites W2953789964 @default.
- W4386447029 cites W2973049920 @default.
- W4386447029 cites W2999615587 @default.
- W4386447029 cites W3007358495 @default.
- W4386447029 cites W3009840495 @default.
- W4386447029 cites W3035686420 @default.
- W4386447029 cites W3036527610 @default.
- W4386447029 cites W3094596372 @default.
- W4386447029 cites W3119120076 @default.
- W4386447029 cites W3125776321 @default.
- W4386447029 cites W3128646645 @default.
- W4386447029 cites W3136634572 @default.
- W4386447029 cites W3162472392 @default.
- W4386447029 cites W3184673326 @default.
- W4386447029 cites W3216907106 @default.
- W4386447029 cites W4220727652 @default.
- W4386447029 cites W4229083660 @default.
- W4386447029 cites W4286633807 @default.
- W4386447029 cites W4297361208 @default.
- W4386447029 cites W4321456252 @default.
- W4386447029 doi "https://doi.org/10.21203/rs.3.rs-3300766/v1" @default.
- W4386447029 hasPublicationYear "2023" @default.
- W4386447029 type Work @default.
- W4386447029 citedByCount "0" @default.
- W4386447029 crossrefType "posted-content" @default.
- W4386447029 hasAuthorship W4386447029A5002454159 @default.
- W4386447029 hasAuthorship W4386447029A5015642582 @default.
- W4386447029 hasAuthorship W4386447029A5019362135 @default.
- W4386447029 hasAuthorship W4386447029A5027249380 @default.
- W4386447029 hasAuthorship W4386447029A5028573330 @default.
- W4386447029 hasAuthorship W4386447029A5049904562 @default.
- W4386447029 hasAuthorship W4386447029A5055992794 @default.
- W4386447029 hasAuthorship W4386447029A5057450759 @default.
- W4386447029 hasAuthorship W4386447029A5058564365 @default.
- W4386447029 hasAuthorship W4386447029A5060584732 @default.
- W4386447029 hasAuthorship W4386447029A5061076734 @default.
- W4386447029 hasAuthorship W4386447029A5063909638 @default.
- W4386447029 hasAuthorship W4386447029A5077849549 @default.
- W4386447029 hasAuthorship W4386447029A5089520665 @default.
- W4386447029 hasBestOaLocation W43864470291 @default.
- W4386447029 hasConcept C119857082 @default.
- W4386447029 hasConcept C12267149 @default.
- W4386447029 hasConcept C126322002 @default.
- W4386447029 hasConcept C141404830 @default.
- W4386447029 hasConcept C143998085 @default.
- W4386447029 hasConcept C151956035 @default.
- W4386447029 hasConcept C154945302 @default.
- W4386447029 hasConcept C169258074 @default.
- W4386447029 hasConcept C169903167 @default.
- W4386447029 hasConcept C179717631 @default.
- W4386447029 hasConcept C2778997737 @default.
- W4386447029 hasConcept C41008148 @default.
- W4386447029 hasConcept C50644808 @default.
- W4386447029 hasConcept C509974204 @default.
- W4386447029 hasConcept C58471807 @default.
- W4386447029 hasConcept C71924100 @default.
- W4386447029 hasConceptScore W4386447029C119857082 @default.
- W4386447029 hasConceptScore W4386447029C12267149 @default.
- W4386447029 hasConceptScore W4386447029C126322002 @default.
- W4386447029 hasConceptScore W4386447029C141404830 @default.
- W4386447029 hasConceptScore W4386447029C143998085 @default.
- W4386447029 hasConceptScore W4386447029C151956035 @default.
- W4386447029 hasConceptScore W4386447029C154945302 @default.
- W4386447029 hasConceptScore W4386447029C169258074 @default.
- W4386447029 hasConceptScore W4386447029C169903167 @default.
- W4386447029 hasConceptScore W4386447029C179717631 @default.
- W4386447029 hasConceptScore W4386447029C2778997737 @default.