Development and validation of a patient-specific model to predict postoperative SIRS in older patients: A two-center study
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Yaxin Lu | Zifeng Liu | Z. Hei | Shaoli Zhou | Chaojin Chen | Shao-li Zhou | Tongsen Luo | Qi Zhang | Xiaoyue Li | Jing-Nan Chen | Jingjing Chen
[1] F. D’Ascenzo,et al. Machine learning-based prediction of adverse events following an acute coronary syndrome (PRAISE): a modelling study of pooled datasets , 2021, The Lancet.
[2] B. Koes,et al. Developing clinical prediction models for nonrecovery in older patients seeking care for back pain: the back complaints in the elders prospective cohort study , 2020, Pain.
[3] Zhichao Zheng,et al. Validation of prognostic accuracy of the SOFA score, SIRS criteria, and qSOFA score for in‐hospital mortality among cardiac‐, thoracic‐, and vascular‐surgery patients admitted to a cardiothoracic intensive care unit , 2019, Journal of cardiac surgery.
[4] J. Bruce,et al. The Combined SIRS + qSOFA (qSIRS) Score is More Accurate Than qSOFA Alone in Predicting Mortality in Patients with Surgical Sepsis in an LMIC Emergency Department , 2019, World Journal of Surgery.
[5] Max Kuhn,et al. Feature Engineering and Selection , 2019 .
[6] Samuel J. Lin,et al. Risk factors associated with the development of sepsis after reconstructive flap surgery* , 2019, Journal of plastic surgery and hand surgery.
[7] F. Ko. Preoperative Frailty Evaluation: A Promising Risk-stratification Tool in Older Adults Undergoing General Surgery. , 2019, Clinical therapeutics.
[8] M. Irwin,et al. Peri‐operative optimisation of elderly and frail patients: a narrative review , 2019, Anaesthesia.
[9] Jianquan Hou,et al. The Predictive Value of Preoperative High-Sensitive C-Reactive Protein/Albumin Ratio in Systemic Inflammatory Response Syndrome After Percutaneous Nephrolithotomy. , 2019, Journal of endourology.
[10] Shang Huang,et al. [Establishment of a nomogram model to predict systemic inflammatory response syndrome after transrectal ultrasound-guided prostate biopsy]. , 2018 .
[11] Z. Hei,et al. Perioperative application of dexmedetomidine for postoperative systemic inflammatory response syndrome in patients undergoing percutaneous nephrolithotomy lithotripsy: results of a randomised controlled trial , 2018, BMJ Open.
[12] Zheng Zhang,et al. High levels of circulating GM-CSF+CD4+ T cells are predictive of poor outcomes in sepsis patients: a prospective cohort study , 2018, Cellular & Molecular Immunology.
[13] Zheng Zhang,et al. High levels of circulating GM-CSF+CD4+ T cells are predictive of poor outcomes in sepsis patients: a prospective cohort study , 2018, Cellular & Molecular Immunology.
[14] Ethan Y. Brovman,et al. Risk Factors and Outcomes Associated With Sepsis After Coronary Artery Bypass and Open Heart Valve Surgeries , 2018, Seminars in cardiothoracic and vascular anesthesia.
[15] P. Póvoa,et al. A Comparison of the Quick‐SOFA and Systemic Inflammatory Response Syndrome Criteria for the Diagnosis of Sepsis and Prediction of Mortality: A Systematic Review and Meta‐Analysis , 2017, Chest.
[16] M. Delgado-Rodríguez,et al. Systematic review and meta-analysis. , 2017, Medicina intensiva.
[17] G. Orhan,et al. Effects of age on systemic inflammatory response syndrome and results of coronary bypass surgery , 2018, Cardiovascular journal of Africa.
[18] S. Simpson. SIRS in the Time of Sepsis-3. , 2018, Chest.
[19] C. Reid,et al. Age and other perioperative risk factors for postoperative systemic inflammatory response syndrome after cardiac surgery , 2017, British journal of anaesthesia.
[20] Ibrahim Buldu,et al. Platelet-to-Lymphocyte Ratio: A New Factor for Predicting Systemic Inflammatory Response Syndrome after Percutaneous Nephrolithotomy. , 2017, Urology journal.
[21] T. Ye,et al. Predictive value of preoperative inflammatory response biomarkers for metabolic syndrome and post-PCNL systemic inflammatory response syndrome in patients with nephrolithiasis , 2017, Oncotarget.
[22] L. Laine,et al. Early Aggressive Hydration Hastens Clinical Improvement in Mild Acute Pancreatitis , 2017, American Journal of Gastroenterology.
[23] M. Menon,et al. Postoperative sepsis prediction in patients undergoing major cancer surgery. , 2017, The Journal of surgical research.
[24] M. Monga,et al. C-Reactive Protein and Erythrocyte Sedimentation Rate Predict Systemic Inflammatory Response Syndrome After Percutaneous Nephrolithotomy. , 2017, Journal of endourology.
[25] N. Pirmadjid,et al. Inflammatory and Immune Responses to Surgery and Their Clinical Impact , 2016, Annals of surgery.
[26] A. Seth,et al. Systemic Inflammatory Response Syndrome Following Percutaneous Nephrolithotomy: Assessment of Risk Factors and Their Impact on Patient Outcomes , 2016, Urologia internationalis.
[27] B. Heniford,et al. Risk factors for postoperative sepsis in laparoscopic gastric bypass , 2016, Surgical Endoscopy.
[28] K. Kent,et al. Nomogram to Predict Postoperative Readmission in Patients Who Undergo General Surgery. , 2015, JAMA surgery.
[29] Michael Bailey,et al. Systemic inflammatory response syndrome criteria in defining severe sepsis. , 2015, The New England journal of medicine.
[30] G. Collins,et al. Transparent reporting of a multivariable prediction model for individual prognosis or diagnosis (TRIPOD): the TRIPOD Statement , 2015, BMC Medicine.
[31] Cindy M. Gray,et al. Results: the randomised controlled trial , 2015 .
[32] J. Bai,et al. Inhibition enhancer of zeste homologue 2 promotes senescence and apoptosis induced by doxorubicin in p53 mutant gastric cancer cells , 2014, Cell proliferation.
[33] R. Balk. Systemic inflammatory response syndrome (SIRS) , 2013, Virulence.
[34] B. Eisner,et al. Risk factors for sepsis after percutaneous renal stone surgery , 2013, Nature Reviews Urology.
[35] V. Ferraris,et al. The relationship between intraoperative blood transfusion and postoperative systemic inflammatory response syndrome. , 2013, American journal of surgery.
[36] P. Marik,et al. Narrative Review , 2012, Journal of intensive care medicine.
[37] M. Chan,et al. Systemic inflammation in the elderly. , 2011, Best practice & research. Clinical anaesthesiology.
[38] C. Sprung,et al. Postoperative sepsis , 2011, Current opinion in critical care.
[39] E. Steyerberg,et al. [Regression modeling strategies]. , 2011, Revista espanola de cardiologia.
[40] N. Tangri,et al. A predictive model for progression of chronic kidney disease to kidney failure. , 2011, JAMA.
[41] V. Preedy,et al. Prospective Cohort Study , 2010 .
[42] K. Sihler,et al. Complications of massive transfusion. , 2010, Chest.
[43] N. Klein,et al. Increased incidence and severity of the systemic inflammatory response syndrome in patients deficient in mannose-binding lectin , 2004, Intensive Care Medicine.
[44] Leo Breiman,et al. Random Forests , 2001, Machine Learning.
[45] Mitchell M. Levy,et al. 2001 SCCM/ESICM/ACCP/ATS/SIS International Sepsis Definitions Conference , 2003, Intensive Care Medicine.
[46] C. Brun-Buisson,et al. The epidemiology of the systemic inflammatory response , 2000, Intensive Care Medicine.
[47] D. Pittet,et al. The natural history of the systemic inflammatory response syndrome (SIRS). A prospective study. , 1995, JAMA.