Machine learning-based survival prediction nomogram for postoperative parotid mucoepidermoid carcinoma

被引:2
|
作者
Huang, Zongwei [1 ]
Chen, Zihan [1 ]
Li, Ying [1 ]
Lin, Ting [1 ]
Cai, Sunqin [1 ]
Wu, Wenxi [1 ]
Wu, Lishui [1 ]
Xu, Siqi [1 ]
Lu, Jun [1 ]
Qiu, Sufang [2 ]
机构
[1] Fujian Med Univ, Fujian Canc Hosp, Canc Hosp, Fuzhou, Peoples R China
[2] Fujian Med Univ, Fujian Canc Hosp, Clin Oncol Sch, Radiat Oncol Dept, Fuzhou, Fujian, Peoples R China
关键词
Machine learning; Parotid mucoepidermoid carcinoma; Nomogram; Postoperative radiotherapy; SEER; MAJOR SALIVARY-GLANDS; RADIOTHERAPY; SURGERY;
D O I
10.1038/s41598-024-58329-8
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
Parotid mucoepidermoid carcinoma (P-MEC) is a significant histopathological subtype of salivary gland cancer with inherent heterogeneity and complexity. Existing clinical models inadequately offer personalized treatment options for patients. In response, we assessed the efficacy of four machine learning algorithms vis-a-vis traditional analysis in forecasting the overall survival (OS) of P-MEC patients. Using the SEER database, we analyzed data from 882 postoperative P-MEC patients (stages I-IVA). Single-factor Cox regression and four machine learning techniques (random forest, LASSO, XGBoost, best subset regression) were employed for variable selection. The optimal model was derived via stepwise backward regression, Akaike Information Criterion (AIC), and Area Under the Curve (AUC). Bootstrap resampling facilitated internal validation, while prediction accuracy was gauged through C-index, time-dependent ROC curve, and calibration curve. The model's clinical relevance was ascertained using decision curve analysis (DCA). The study found 3-, 5-, and 10-year OS rates of 0.887, 0.841, and 0.753, respectively. XGBoost, BSR, and LASSO stood out in predictive efficacy, identifying seven key prognostic factors including age, pathological grade, T stage, N stage, radiation therapy, chemotherapy, and marital status. A subsequent nomogram revealed a C-index of 0.8499 (3-year), 0.8557 (5-year), and 0.8375 (10-year) and AUC values of 0.8670, 0.8879, and 0.8767, respectively. The model also highlighted the clinical significance of postoperative radiotherapy across varying risk levels. Our prognostic model, grounded in machine learning, surpasses traditional models in prediction and offer superior visualization of variable importance.
引用
收藏
页数:13
相关论文
共 50 条
  • [21] Establishment of prognostic nomogram for high-grade parotid gland mucoepidermoid carcinoma based on the SEER database
    Wu, Yubin
    Wu, Shihai
    Li, Xianming
    ENT-EAR NOSE & THROAT JOURNAL, 2022,
  • [22] Nomogram to predict the prognosis of parotid gland mucoepidermoid carcinoma: a population-based study of 1306 cases
    Sun, Jian
    Sun, Yang
    Yang, Fei
    Zhou, Qianrong
    Liu, Wenjuan
    Cheng, Yong
    Wu, Xingwen
    Chen, Tinglan
    Li, Ruixue
    Huang, Borui
    Att, Wael
    Yu, Youcheng
    Bi, Wei
    PEERJ, 2019, 7
  • [23] Clinicopathological Predictors of Survival for Parotid Mucoepidermoid Carcinoma: A Systematic Review
    Cheng, Emily YiQin
    Kim, Joo Hyun
    Grose, Elysia M.
    Philteos, Justine
    Levin, Marc
    de Almeida, John
    Goldstein, David
    OTOLARYNGOLOGY-HEAD AND NECK SURGERY, 2023, 168 (04) : 611 - 618
  • [24] Machine learning-based prediction of transfusion
    Mitterecker, Andreas
    Hofmann, Axel
    Trentino, Kevin M.
    Lloyd, Adam
    Leahy, Michael F.
    Schwarzbauer, Karin
    Tschoellitsch, Thomas
    Boeck, Carl
    Hochreiter, Sepp
    Meier, Jens
    TRANSFUSION, 2020, 60 (09) : 1977 - 1986
  • [25] Development of a machine learning-based risk prediction model for cerebral infarction and comparison with nomogram model
    Li, Xuewen
    Wang, Yiting
    Xu, Jiancheng
    JOURNAL OF AFFECTIVE DISORDERS, 2022, 314 : 341 - 348
  • [26] Development and validation of a machine learning-based nomogram for prediction of intrahepatic cholangiocarcinoma in patients with intrahepatic lithiasis
    Shen, Xian
    Zhao, Huanhu
    Jin, Xing
    Chen, Junyu
    Yu, Zhengping
    Ramen, Kuvaneshan
    Zheng, Xiangwu
    Wu, Xiuling
    Shan, Yunfeng
    Bai, Jianling
    Zhang, Qiyu
    Zeng, Qiqiang
    HEPATOBILIARY SURGERY AND NUTRITION, 2021, 10 (06) : 749 - +
  • [27] Enhancing machine learning-based survival prediction models for patients with cardiovascular diseases
    Rastogi, Tripti
    Girerd, Nicolas
    INTERNATIONAL JOURNAL OF CARDIOLOGY, 2024, 410
  • [28] EFFECT OF A MACHINE LEARNING-BASED SEVERE SEPSIS PREDICTION ALGORITHM ON PATIENT SURVIVAL
    Barton, Chris
    Shimabakuru, David
    Feldman, Mitchel
    Mataraso, Samson
    Das, Ritankar
    CRITICAL CARE MEDICINE, 2018, 46 (01) : 699 - 699
  • [29] Machine learning-based prediction model for postoperative delirium in non-cardiac surgery
    Lee, Dong Yun
    Oh, Ah Ran
    Park, Jungchan
    Lee, Seung-Hwa
    Choi, Byungjin
    Yang, Kwangmo
    Kim, Ha Yeon
    Park, Rae Woong
    BMC PSYCHIATRY, 2023, 23 (01)
  • [30] Machine Learning-Based Algorithm for the Early Prediction of Postoperative Hypocalcemia Risk After Thyroidectomy
    Muller, Olivier
    Bauvin, Pierre
    Bacoeur, Ophelie
    Michailos, Theo
    Bertoni, Maria-Vittoria
    Demory, Charles
    Marciniak, Camille
    Chetboun, Mikael
    Baud, Gregory
    Raffaelli, Marco
    Caiazzo, Robert
    Pattou, Francois
    ANNALS OF SURGERY, 2024, 280 (05) : 835 - 841