Use of machine learning in pediatric surgical clinical prediction tools: A systematic review.
暂无分享,去创建一个
[1] N. Bambos,et al. Prediction of Prolonged Opioid Use After Surgery in Adolescents: Insights From Machine Learning , 2021, Anesthesia and analgesia.
[2] Julia E. Vogt,et al. Using Machine Learning to Predict the Diagnosis, Management and Severity of Pediatric Appendicitis , 2021, Frontiers in Pediatrics.
[3] D. Bertsimas,et al. Adverse Outcomes Prediction for Congenital Heart Surgery: A Machine Learning Approach , 2021, World journal for pediatric & congenital heart surgery.
[4] Wilson Castro,et al. A Hybrid Intelligent Approach to Predict Discharge Diagnosis in Pediatric Surgical Patients , 2021, Applied Sciences.
[5] H. Duan,et al. Understanding risk factors for postoperative mortality in neonates based on explainable machine learning technology. , 2021, Journal of pediatric surgery.
[6] Benjamin D. Wissel,et al. Early identification of epilepsy surgery candidates: A multicenter, machine learning study , 2021, Acta neurologica Scandinavica.
[7] S. Pan,et al. Prediction of arrhythmia after intervention in children with atrial septal defect based on random forest , 2021, BMC Pediatrics.
[8] A. Hale,et al. Machine learning predicts risk of cerebrospinal fluid shunt failure in children: a study from the hydrocephalus clinical research network , 2021, Child's Nervous System.
[9] C. Cooper,et al. The additive impact of the distal ureteral diameter ratio in predicting early breakthrough urinary tract infections in children with vesicoureteral reflux. , 2021, Journal of pediatric urology.
[10] Shuxuan Ma,et al. Predicting the postoperative blood coagulation state of children with congenital heart disease by machine learning based on real-world data , 2021, Translational pediatrics.
[11] S. N. Payrovnaziri,et al. Machine learning-based prediction of health outcomes in pediatric organ transplantation recipients. , 2021, JAMIA open.
[12] Y. Guo,et al. Distinguishing Focal Cortical Dysplasia From Glioneuronal Tumors in Patients With Epilepsy by Machine Learning , 2020, Frontiers in Neurology.
[13] J. Herrmann,et al. The Modified Heidelberg and the AI Appendicitis Score Are Superior to Current Scores in Predicting Appendicitis in Children: A Two-Center Cohort Study , 2020, Frontiers in Pediatrics.
[14] J. Neu,et al. Using machine learning analysis to assist in differentiating between necrotizing enterocolitis and spontaneous intestinal perforation: A novel predictive analytic tool. , 2020, Journal of pediatric surgery.
[15] P. Newton,et al. Machine Learning Predicts the 3D Outcomes of Adolescent Idiopathic Scoliosis Surgery Using Patient-Surgeon Specific Parameters. , 2020, Spine.
[16] Katie L. Ovens,et al. Machine Learning Algorithm Validation: From Essentials to Advanced Applications and Implications for Regulatory Certification and Deployment. , 2020, Neuroimaging clinics of North America.
[17] S. Moulton,et al. Decision-making in pediatric blunt solid organ injury: a deep learning approach to predict massive transfusion, need for operative management, and mortality risk. , 2020, Journal of pediatric surgery.
[18] F. Jatene,et al. Improving preoperative risk-of-death prediction in surgery congenital heart defects using artificial intelligence model: A pilot study , 2020, PloS one.
[19] Shan Zheng,et al. Diagnostic Value and Effectiveness of an Artificial Neural Network in Biliary Atresia , 2020, Frontiers in Pediatrics.
[20] B. Caldwell,et al. A decision tree to guide long term venous access placement in children and adolescents undergoing surgery for renal tumors. , 2020, Journal of pediatric surgery.
[21] J. Fackler,et al. Machine Learning Applied to Registry Data: Development of a Patient-Specific Prediction Model for Blood Transfusion Requirements During Craniofacial Surgery Using the Pediatric Craniofacial Perioperative Registry Dataset , 2020, Anesthesia and analgesia.
[22] A. Isaiah,et al. Predicting polysomnographic severity thresholds in children using machine learning , 2020, Pediatric Research.
[23] E. Aydın,et al. A novel and simple machine learning algorithm for preoperative diagnosis of acute appendicitis in children , 2020, Pediatric Surgery International.
[24] Xiaohang Wu,et al. A practical model for the identification of congenital cataracts using machine learning , 2020, EBioMedicine.
[25] Justin Lessler,et al. What Is Machine Learning: a Primer for the Epidemiologist. , 2019, American journal of epidemiology.
[26] Yizhao Ni,et al. Mining patient-specific and contextual data with machine learning technologies to predict cancellation of children's surgery , 2019, Int. J. Medical Informatics.
[27] Sabine Maguire,et al. Methodological standards for the development and evaluation of clinical prediction rules: a review of the literature , 2019, Diagnostic and Prognostic Research.
[28] V. Ng,et al. Predicting ideal outcome after pediatric liver transplantation: An exploratory study using machine learning analyses to leverage Studies of Pediatric Liver Transplantation Data , 2019, Pediatric transplantation.
[29] Henry A Ogoe,et al. Early prediction of critical events for infants with single-ventricle physiology in critical care using routinely collected data. , 2019, The Journal of thoracic and cardiovascular surgery.
[30] 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.
[31] Jennifer N. Cooper,et al. Prediction of mortality following pediatric heart transplant using machine learning algorithms , 2019, Pediatric transplantation.
[32] Jiewei Jiang,et al. Prediction of postoperative complications of pediatric cataract patients using data mining , 2019, Journal of Translational Medicine.
[33] Armando J Lorenzo,et al. Predictive Analytics and Modeling Employing Machine Learning Technology: The Next Step in Data Sharing, Analysis, and Individualized Counseling Explored With a Large, Prospective Prenatal Hydronephrosis Database. , 2019, Urology.
[34] A. Hale,et al. Machine-learning analysis outperforms conventional statistical models and CT classification systems in predicting 6-month outcomes in pediatric patients sustaining traumatic brain injury. , 2018, Neurosurgical focus.
[35] B. Bucher,et al. Enhanced neonatal surgical site infection prediction model utilizing statistically and clinically significant variables in combination with a machine learning algorithm. , 2018, American journal of surgery.
[36] Rui Xiao,et al. Identifying surgical site infections in electronic health data using predictive models , 2018, J. Am. Medical Informatics Assoc..
[37] Ali Jalali,et al. Prediction of Periventricular Leukomalacia in Neonates after Cardiac Surgery Using Machine Learning Algorithms , 2018, Journal of Medical Systems.
[38] Gong Chen,et al. Development and Validation of Novel Diagnostic Models for Biliary Atresia in a Large Cohort of Chinese Patients , 2018, EBioMedicine.
[39] K. Mengersen,et al. Analysis of the predictive value of clinical and sonographic variables in children with suspected acute appendicitis using decision tree algorithms , 2018, Sonography.
[40] I. A. Espinosa de Santillana,et al. The RIPASA score for the diagnosis of acute appendicitis: A comparison with the modified Alvarado score. , 2018, Revista de gastroenterologia de Mexico.
[41] A. MacCormick,et al. Derivation and validation of the APPEND score: an acute appendicitis clinical prediction rule , 2018, ANZ journal of surgery.
[42] L. Yang,et al. Prediction Algorithm for Surgical Intervention in Neonatal Brachial Plexus Palsy , 2018, Neurosurgery.
[43] B. McCrindle,et al. Prelisting predictions of early postoperative survival in infant heart transplantation using classification and regression tree analysis , 2018, Pediatric transplantation.
[44] J. Skoch,et al. Predicting symptomatic cerebral vasospasm after aneurysmal subarachnoid hemorrhage with an artificial neural network in a pediatric population , 2017, Child's Nervous System.
[45] Hossam M. Hammady,et al. Rayyan—a web and mobile app for systematic reviews , 2016, Systematic Reviews.
[46] Hooshang Saberi,et al. Predicting ventriculoperitoneal shunt infection in children with hydrocephalus using artificial neural network , 2016, Child's Nervous System.
[47] Antonio Soriano Payá,et al. Aid decision algorithms to estimate the risk in congenital heart surgery , 2016, Comput. Methods Programs Biomed..
[48] Ahmad Azizi,et al. Evaluation of Suspected Pediatric Appendicitis with Alvarado Method Using a Computerized Intelligent Model , 2016 .
[49] K. Cohen,et al. Methodological Issues in Predicting Pediatric Epilepsy Surgery Candidates Through Natural Language Processing and Machine Learning , 2016, Biomedical informatics insights.
[50] Lai Wei,et al. Pre-operative prediction of surgical morbidity in children: Comparison of five statistical models , 2015, Comput. Biol. Medicine.
[51] Ali Jalali,et al. Prediction of Periventricular Leukomalacia Occurrence in Neonates After Heart Surgery , 2014, IEEE Journal of Biomedical and Health Informatics.
[52] P. Azimi,et al. Predicting endoscopic third ventriculostomy success in childhood hydrocephalus: an artificial neural network analysis. , 2014, Journal of neurosurgery. Pediatrics.
[53] Michael H Schwartz,et al. Femoral derotational osteotomy: surgical indications and outcomes in children with cerebral palsy. , 2014, Gait & posture.
[54] S. Adams,et al. Clinical prediction rules , 2012, BMJ : British Medical Journal.
[55] Nathan Kuppermann,et al. Clinical Prediction Rules for Children: A Systematic Review , 2011, Pediatrics.
[56] J. Ioannidis,et al. The PRISMA statement for reporting systematic reviews and meta-analyses of studies that evaluate healthcare interventions: explanation and elaboration , 2009, BMJ : British Medical Journal.
[57] R. Andersson,et al. The Appendicitis Inflammatory Response Score: A Tool for the Diagnosis of Acute Appendicitis that Outperforms the Alvarado Score , 2008, World Journal of Surgery.
[58] N. Bitterlich,et al. Increased predictive value of parameters by fuzzy logic‐based multiparameter analysis , 2003, Cytometry. Part B, Clinical cytometry.
[59] Thomas Sullivan,et al. Development of a model for prediction of survival in pediatric trauma patients: comparison of artificial neural networks and logistic regression. , 2002, Journal of pediatric surgery.
[60] Madan Samuel,et al. Pediatric appendicitis score. , 2002, Journal of pediatric surgery.
[61] A Alvarado,et al. A practical score for the early diagnosis of acute appendicitis. , 1986, Annals of emergency medicine.
[62] G. Collins,et al. PROBAST: A Tool to Assess the Risk of Bias and Applicability of Prediction Model Studies , 2019, Annals of Internal Medicine.
[63] Jennifer N. Cooper,et al. Postoperative neonatal mortality prediction using superlearning. , 2018, The Journal of surgical research.
[64] John P. A. Ioannidis,et al. Opportunities and challenges in developing risk prediction models with electronic health records data: a systematic review , 2017, J. Am. Medical Informatics Assoc..