Literature DB >> 33925766

Prediction of Hypertension Outcomes Based on Gain Sequence Forward Tabu Search Feature Selection and XGBoost.

Wenbing Chang1, Xinpeng Ji1, Yiyong Xiao1, Yue Zhang1, Bang Chen1, Houxiang Liu1, Shenghan Zhou1.   

Abstract

For patients with hypertension, serious complications, such as myocardial infarction, a common cause of heart failure, occurs in the late stage of hypertension. Hypertension outcomes can lead to complications, including death. Hypertension outcomes threaten patients' lives and need to be predicted. In our research, we reviewed the hypertension medical data from a tertiary-grade A class hospital in Beijing, and established a hypertension outcome prediction model with the machine learning theory. We first proposed a gain sequence forward tabu search feature selection (GSFTS-FS) method, which can search the optimal combination of medical variables that affect hypertension outcomes. Based on this, the XGBoost algorithm established a prediction model because of its good stability. We verified the proposed method by comparing other commonly used models in similar works. The proposed GSFTS-FS improved the performance by about 10%. The proposed prediction method has the best performance and its AUC value, accuracy, F1 value, and recall of 10-fold cross-validation were 0.96. 0.95, 0.88, and 0.82, respectively. It also performed well on test datasets with 0.92, 0.94, 0.87, and 0.80 for AUC, accuracy, F1, and recall, respectively. Therefore, the XGBoost with GSFTS-FS can accurately and effectively predict the occurrence of outcomes for patients with hypertension, and can provide guidance for doctors in clinical diagnoses and medical decision-making.

Entities:  

Keywords:  XGBoost; biomedical engineering; disease prediction; feature selection; gain sequence forward tabu search; hypertension outcomes

Year:  2021        PMID: 33925766     DOI: 10.3390/diagnostics11050792

Source DB:  PubMed          Journal:  Diagnostics (Basel)        ISSN: 2075-4418


  9 in total

1.  Heuristic filter feature selection methods for medical datasets.

Authors:  Mehdi Alirezanejad; Rasul Enayatifar; Homayun Motameni; Hossein Nematzadeh
Journal:  Genomics       Date:  2019-07-02       Impact factor: 5.736

2.  Personalized machine learning approach to predict candidemia in medical wards.

Authors:  Andrea Ripoli; Emanuela Sozio; Francesco Sbrana; Giacomo Bertolino; Carlo Pallotto; Gianluigi Cardinali; Simone Meini; Filippo Pieralli; Anna Maria Azzini; Ercole Concia; Bruno Viaggi; Carlo Tascini
Journal:  Infection       Date:  2020-08-01       Impact factor: 3.553

Review 3.  Machine Learning in Medical Imaging.

Authors:  Maryellen L Giger
Journal:  J Am Coll Radiol       Date:  2018-02-02       Impact factor: 5.532

4.  Predicting urinary tract infections in the emergency department with machine learning.

Authors:  R Andrew Taylor; Christopher L Moore; Kei-Hoi Cheung; Cynthia Brandt
Journal:  PLoS One       Date:  2018-03-07       Impact factor: 3.240

5.  Using machine learning on cardiorespiratory fitness data for predicting hypertension: The Henry Ford ExercIse Testing (FIT) Project.

Authors:  Sherif Sakr; Radwa Elshawi; Amjad Ahmed; Waqas T Qureshi; Clinton Brawner; Steven Keteyian; Michael J Blaha; Mouaz H Al-Mallah
Journal:  PLoS One       Date:  2018-04-18       Impact factor: 3.240

6.  Comparison of Machine Learning Methods With Traditional Models for Use of Administrative Claims With Electronic Medical Records to Predict Heart Failure Outcomes.

Authors:  Rishi J Desai; Shirley V Wang; Muthiah Vaduganathan; Thomas Evers; Sebastian Schneeweiss
Journal:  JAMA Netw Open       Date:  2020-01-03

7.  A Machine-Learning-Based Prediction Method for Hypertension Outcomes Based on Medical Data.

Authors:  Wenbing Chang; Yinglai Liu; Yiyong Xiao; Xinglong Yuan; Xingxing Xu; Siyue Zhang; Shenghan Zhou
Journal:  Diagnostics (Basel)       Date:  2019-11-07

8.  Prediction of Incident Hypertension Within the Next Year: Prospective Study Using Statewide Electronic Health Records and Machine Learning.

Authors:  Chengyin Ye; Tianyun Fu; Shiying Hao; Doff McElhinney; Xuefeng Ling; Yan Zhang; Oliver Wang; Bo Jin; Minjie Xia; Modi Liu; Xin Zhou; Qian Wu; Yanting Guo; Chunqing Zhu; Yu-Ming Li; Devore S Culver; Shaun T Alfreds; Frank Stearns; Karl G Sylvester; Eric Widen
Journal:  J Med Internet Res       Date:  2018-01-30       Impact factor: 5.428

9.  A machine learning approach for the prediction of pulmonary hypertension.

Authors:  Andreas Leha; Kristian Hellenkamp; Bernhard Unsöld; Sitali Mushemi-Blake; Ajay M Shah; Gerd Hasenfuß; Tim Seidler
Journal:  PLoS One       Date:  2019-10-25       Impact factor: 3.240

  9 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.