Conventional regression analysis and machine learning in prediction of anastomotic leakage and pulmonary complications after esophagogastric cancer surgery
暂无分享,去创建一个
R. Tollenaar | H. Hartgrink | R. Bahadoer | M. Wouters | H. Putter | R. V. van Kooten | J. L. Dikken | Bouwdewijn Ter Buurkes de Vries
[1] E. Steyerberg,et al. ASO Visual Abstract: Patient-Related Prognostic Factors for Anastomotic Leakage, Major Complications, and Short-Term Mortality Following Esophagectomy for Cancer: A Systematic Review and Meta-Analyses , 2021, Annals of Surgical Oncology.
[2] E. Steyerberg,et al. Patient-Related Prognostic Factors for Anastomotic Leakage, Major Complications, and Short-Term Mortality Following Esophagectomy for Cancer: A Systematic Review and Meta-Analyses , 2021, Annals of Surgical Oncology.
[3] R. van Hillegersberg,et al. Outcomes of Esophagogastric Cancer Surgery During Eight Years of Surgical Auditing by the Dutch Upper Gastrointestinal Cancer Audit (DUCA) , 2021, Annals of surgery.
[4] Konrad Paul Kording,et al. Machine Learning and Surgical Outcomes Prediction: A Systematic Review. , 2021, The Journal of surgical research.
[5] P. Baldi,et al. Development and validation of a deep neural network model to predict postoperative mortality, acute kidney injury, and reintubation using a single feature set , 2020, npj Digital Medicine.
[6] D. Hess,et al. Development and validation of machine learning models to predict gastrointestinal leak and venous thromboembolism after weight loss surgery: an analysis of the MBSAQIP database , 2020, Surgical Endoscopy.
[7] N. McCaffrey,et al. Perioperative prehabilitation and rehabilitation in esophagogastric malignancies: a systematic review. , 2019, Diseases of the esophagus : official journal of the International Society for Diseases of the Esophagus.
[8] Ricardo L. Rojas,et al. Understanding Failure-to-Rescue after Esophagectomy in the United States. , 2019, The Annals of thoracic surgery.
[9] O. Ljungqvist,et al. Enhanced recovery programs in gastrointestinal surgery: Actions to promote optimal perioperative nutritional and metabolic care. , 2019, Clinical nutrition.
[10] Wencong Lu,et al. Machine-learning-assisted prediction of surgical outcomes in patients undergoing gastrectomy , 2019, Chinese journal of cancer research = Chung-kuo yen cheng yen chiu.
[11] Junping Chen,et al. Preoperative albumin-to-fibrinogen ratio predicts severe postoperative complications in elderly gastric cancer subjects after radical laparoscopic gastrectomy , 2019, BMC Cancer.
[12] Y. Ouyang,et al. The effect of preoperative smoking cessation and smoking dose on postoperative complications following radical gastrectomy for gastric cancer: a retrospective study of 2469 patients , 2019, World Journal of Surgical Oncology.
[13] S. Valabrega,et al. Recurrence Following Anastomotic Leakage After Surgery for Carcinoma of the Distal Esophagus and Gastroesophageal Junction: A Systematic Review , 2019, AntiCancer Research.
[14] Jie Ma,et al. A systematic review shows no performance benefit of machine learning over logistic regression for clinical prediction models. , 2019, Journal of clinical epidemiology.
[15] J. V. van Sandick,et al. Reporting National Outcomes After Esophagectomy and Gastrectomy According to the Esophageal Complications Consensus Group (ECCG) , 2019, Annals of surgery.
[16] R. van Hillegersberg,et al. A National Cohort Study Evaluating the Association Between Short-term Outcomes and Long-term Survival After Esophageal and Gastric Cancer Surgery. , 2019, Annals of surgery.
[17] A. Hubbard,et al. Machine learning without borders? An adaptable tool to optimize mortality prediction in diverse clinical settings , 2018, The journal of trauma and acute care surgery.
[18] O. Ljungqvist,et al. Guidelines for Perioperative Care in Esophagectomy: Enhanced Recovery After Surgery (ERAS®) Society Recommendations , 2018, World Journal of Surgery.
[19] A. Jemal,et al. Global cancer statistics 2018: GLOBOCAN estimates of incidence and mortality worldwide for 36 cancers in 185 countries , 2018, CA: a cancer journal for clinicians.
[20] M. Büchler,et al. A Nomogram to Predict Anastomotic Leakage in Open Rectal Surgery—Hope or Hype? , 2018, Journal of Gastrointestinal Surgery.
[21] Jun S. Kim,et al. Examining the Ability of Artificial Neural Networks Machine Learning Models to Accurately Predict Complications Following Posterior Lumbar Spine Fusion , 2017, Spine.
[22] R. van Hillegersberg,et al. Failure-to-rescue in patients undergoing surgery for esophageal or gastric cancer. , 2017, European journal of surgical oncology : the journal of the European Society of Surgical Oncology and the British Association of Surgical Oncology.
[23] Richard van Hillegersberg,et al. Nutrition in peri-operative esophageal cancer management , 2017, Expert review of gastroenterology & hepatology.
[24] R. van Hillegersberg,et al. Early outcomes from the Dutch Upper Gastrointestinal Cancer Audit , 2016, The British journal of surgery.
[25] M. Sierzega,et al. Differences in prognosis of Siewert II and III oesophagogastric junction cancers are determined by the baseline tumour staging but not its anatomical location. , 2016, European journal of surgical oncology : the journal of the European Society of Surgical Oncology and the British Association of Surgical Oncology.
[26] R. Rosati,et al. Intra-operative hypotensive episodes may be associated with post-operative esophageal anastomotic leak , 2016, Updates in Surgery.
[27] Chang-ming Huang,et al. Major perioperative complications in laparoscopic spleen-preserving total gastrectomy for gastric cancer: perspectives from a high-volume center , 2016, Surgical Endoscopy.
[28] Sang-Hoon Ahn,et al. Risk Factors for Anastomotic Leakage: A Retrospective Cohort Study in a Single Gastric Surgical Unit , 2015, Journal of gastric cancer.
[29] R. van Hillegersberg,et al. Calcification of arteries supplying the gastric tube: a new risk factor for anastomotic leakage after esophageal surgery. , 2015, Radiology.
[30] A. Møller,et al. Preoperative alcohol cessation prior to elective surgery. , 2012, The Cochrane database of systematic reviews.
[31] A. Geater,et al. Prediction of major postoperative complications and survival for locally advanced esophageal carcinoma patients. , 2012, Asian journal of surgery.
[32] M. Wouters,et al. The Quality of Cancer Care initiative in the Netherlands. , 2010, European journal of surgical oncology : the journal of the European Society of Surgical Oncology and the British Association of Surgical Oncology.
[33] T. B. Vaughan,et al. Intraoperative transfusion of 1 U to 2 U packed red blood cells is associated with increased 30-day mortality, surgical-site infection, pneumonia, and sepsis in general surgery patients. , 2009, Journal of the American College of Surgeons.
[34] A. Ruol,et al. Trends in management and prognosis for esophageal cancer surgery: twenty-five years of experience at a single institution. , 2009, Archives of surgery.
[35] A. Zwinderman,et al. Preoperative prediction of the occurrence and severity of complications after esophagectomy for cancer with use of a nomogram. , 2008, The Annals of thoracic surgery.
[36] F. Spitz,et al. Postoperative Mortality After Esophagectomy for Cancer: Development of a Preoperative Risk Prediction Model , 2008, Annals of Surgical Oncology.
[37] C. Earle,et al. Surgical mortality in patients with esophageal cancer: development and validation of a simple risk score. , 2006, Journal of clinical oncology : official journal of the American Society of Clinical Oncology.
[38] G. Anstead,et al. Steroids, retinoids, and wound healing. , 1998, Advances in wound care : the journal for prevention and healing.
[39] H. Stein,et al. Preoperative risk analysis and postoperative mortality of oesophagectomy for resectable oesophageal cancer , 1998, The British journal of surgery.