Abstract 14955: Machine Learning Predicts Hemodynamic Instability in Children After Cardiac Surgery in Pediatric Intensive Care Unit (PICU)

Circulation ◽  
2020 ◽  
Vol 142 (Suppl_3) ◽  
Author(s):  
Koichi Sughimoto ◽  
Jacob Levman ◽  
Fazleem Baig ◽  
Derek Berger ◽  
Yoshihiro Oshima ◽  
...  

Introduction: Despite improvements in management for children after cardiac surgery, a non-negligible proportion of patients suffer from cardiac arrest, having a poor prognosis. Although serum lactate levels are widely accepted markers of hemodynamic instability, measuring lactate requires discrete blood sampling. An alternative method to evaluate hemodynamic stability/instability continuously and non-invasively may assist in improving the standard of patient care. Hypothesis: We hypothesize that blood lactate in PICU patients can be predicted using machine learning applied to arterial waveforms and perioperative characteristics. Methods: Forty-eight children, who underwent heart surgery, were included. Patient characteristics and physiological measurements were acquired and analyzed using specialized software/hardware, including heart rate, lactate level, arterial waveform sharpness, and area under the curve. Predicting a patient’s blood lactate levels was accomplished using regression-based supervised learning algorithms, including regression decision trees, tuned decision trees, random forest regressor, tuned random forest, AdaBoost regressor, and hypertuned AdaBoost. All algorithms were compared with hold-out cross validation. Two approaches were considered: basing prediction on the currently acquired physiological measurements along with those acquired at admission, as well as adding the most recent lactate measurement and the time since that measurement as prediction parameters. The second approach supports updating the learning system’s predictive capacity whenever a patient has a new ground truth blood lactate reading acquired. Results: In both approaches, the best performing machine learning method was the tuned random forest, which yielded a mean absolute error of 5.60 mg/dL in the first approach, and 4.62 mg/dL when predicting blood lactate with updated ground truth. Conclusions: In conclusion, the tuned random forest is capable of predicting the level of serum lactate by analyzing perioperative variables, including the arterial pressure waveform. Machine learning can predict the patient’s hemodynamics non-invasively, continuously, and with accuracy that may demonstrate clinical utility.

Pharmacology ◽  
2017 ◽  
Vol 100 (5-6) ◽  
pp. 218-228 ◽  
Author(s):  
Mu-chao Wu ◽  
Wei-ran Ye ◽  
Yi-jia Zheng ◽  
Shan-shan Zhang

Metformin (MET) is the first-line drug for treating type 2 diabetes mellitus (T2DM). However, MET increases blood lactate levels in patients with T2DM. Lactate possesses proinflammatory properties and causes insulin resistance (IR). Oxamate (OXA), a lactate dehydrogenase inhibitor, can decrease tissue lactate production and blood lactate levels. This study was conducted to examine the effects of the combination of OXA and MET on inflammation, and IR in diabetic db/db mice. Supplementation of OXA to MET led to lowered tissue lactate production and serum lactate levels compared to MET alone, accompanied with further decreased tissue and blood levels of pro-inflammatory cytokines, along with better insulin sensitivity, beta-cell mass, and glycemic control in diabetic db/db mice. These results show that OXA enhances the anti-inflammatory and insulin-sensitizing effects of MET through the inhibition of tissue lactate production in db/db mice.


2021 ◽  
Author(s):  
Chris J. Kennedy ◽  
Dustin G. Mark ◽  
Jie Huang ◽  
Mark J. van der Laan ◽  
Alan E. Hubbard ◽  
...  

Background: Chest pain is the second leading reason for emergency department (ED) visits and is commonly identified as a leading driver of low-value health care. Accurate identification of patients at low risk of major adverse cardiac events (MACE) is important to improve resource allocation and reduce over-treatment. Objectives: We sought to assess machine learning (ML) methods and electronic health record (EHR) covariate collection for MACE prediction. We aimed to maximize the pool of low-risk patients that are accurately predicted to have less than 0.5% MACE risk and may be eligible for reduced testing. Population Studied: 116,764 adult patients presenting with chest pain in the ED and evaluated for potential acute coronary syndrome (ACS). 60-day MACE rate was 1.9%. Methods: We evaluated ML algorithms (lasso, splines, random forest, extreme gradient boosting, Bayesian additive regression trees) and SuperLearner stacked ensembling. We tuned ML hyperparameters through nested ensembling, and imputed missing values with generalized low-rank models (GLRM). We benchmarked performance to key biomarkers, validated clinical risk scores, decision trees, and logistic regression. We explained the models through variable importance ranking and accumulated local effect visualization. Results: The best discrimination (area under the precision-recall [PR-AUC] and receiver operating characteristic [ROC-AUC] curves) was provided by SuperLearner ensembling (0.148, 0.867), followed by random forest (0.146, 0.862). Logistic regression (0.120, 0.842) and decision trees (0.094, 0.805) exhibited worse discrimination, as did risk scores [HEART (0.064, 0.765), EDACS (0.046, 0.733)] and biomarkers [serum troponin level (0.064, 0.708), electrocardiography (0.047, 0.686)]. The ensemble's risk estimates were miscalibrated by 0.2 percentage points. The ensemble accurately identified 50% of patients to be below a 0.5% 60-day MACE risk threshold. The most important predictors were age, peak troponin, HEART score, EDACS score, and electrocardiogram. GLRM imputation achieved 90% reduction in root mean-squared error compared to median-mode imputation. Conclusion: Use of ML algorithms, combined with broad predictor sets, improved MACE risk prediction compared to simpler alternatives, while providing calibrated predictions and interpretability. Standard risk scores may neglect important health information available in other characteristics and combined in nuanced ways via ML.


2018 ◽  
pp. 1587-1599
Author(s):  
Hiroaki Koma ◽  
Taku Harada ◽  
Akira Yoshizawa ◽  
Hirotoshi Iwasaki

Detecting distracted states can be applied to various problems such as danger prevention when driving a car. A cognitive distracted state is one example of a distracted state. It is known that eye movements express cognitive distraction. Eye movements can be classified into several types. In this paper, the authors detect a cognitive distraction using classified eye movement types when applying the Random Forest machine learning algorithm, which uses decision trees. They show the effectiveness of considering eye movement types for detecting cognitive distraction when applying Random Forest. The authors use visual experiments with still images for the detection.


1996 ◽  
Vol 22 (12) ◽  
pp. 1418-1423
Author(s):  
L. B. Siegel ◽  
H. J. Dalton ◽  
J. H. Hertzog ◽  
R. A. Hopkins ◽  
R. L. Hannan ◽  
...  

2020 ◽  
Vol 7 (3) ◽  
pp. 67-72
Author(s):  
• Dr. Milind Pol ◽  
Dr. Kajalkumari Jain ◽  
Dr. Sunil Natha Mhaske

Objective:  To compare the effects of early and late use of milrinone in children upto 1  year undergoing complex cardiac surgery. Study design:- prospective randomized study. Methods: A prospective study involved 30 children undergoing congenital corrective cardiac surgery,classified randomly into two groups. Group A: Milrinone infusion  was started without loading dose at  0.5mcg/kg/min at the beginning of CPB and continued postoperatively (0.5-0.75 mcg/kg/min) in the paediatric cardiac surgical ICU . Group B: Milrinone was started as a loading dose of 50mcg/kg over 10 min after aortic declamping and continued as infusion  postoperatively at 0.5-0.75 mcg/kg/min  in the pediatric cardiac surgical ICU.Data were collected at baseline, 1st ,6th  and  12th   postoperative hours in the ICU. Results: The inotropic supports and mechanical supports were needed more in group B than group A. The comparison of heart rate, CVP were insignificant between the two groups (P>0.05). The mean arterial blood pressure through the first 6 hours postoperatively was higher in group A than group B (P<0.05), but became insignificant through other timepoints. The urine output and central venous oxygen saturation were higher in group A than group B (P<0.05).The serum lactate levels were significantly higher in group B more than group A (P<0.05). Conclusion:Early use of milrinone, lead to easy weaning from Cardiopulmonary bypass, decreased requirement of pharmacological and mechanical support and decreased incidence of low cardiac output syndrome after pediatric cardiac surgery and there was no complications related to milrinone in our study patients.


2019 ◽  
Vol 6 (2) ◽  
pp. 120-125
Author(s):  
Bambang Aditya Nugraha ◽  
Sandra Pebrianti ◽  
Hesti Platini ◽  
Gusgus Ghraha Ramdhanie

Anxiety is a problem that found in patients with heart disease. Anxiety will increase when the patient has to undergo the cardiac surgery procedure. Anxiety management must be conducted to prevent postoperative hemodynamic instability and neurohormonal deterioration. Thus it becomes important to formulate the anxiety management to improving the recovery process after surgery and patients quality of life of. The purpose of this literature review is to identify anxiety management on cardiac surgery patient. The search method uses Google Scholar databases using inclusion criteria proposed in consideration management that support heart surgery procedures, the year of publication between 2010-2020, containing the full article, in bahasa and english. Search results found 62 articles, 27 met the criteria of the year and 13 represented the complete article. And finally found as many as 6 articles that match the focus of the search. There are to type anxiety management e.g educational supportive and relaxation technique. Relaxation and supportive educative technique interventions can be used to manage anxiety to improve the post-surgical recovery process and quality of life.


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