Su1573 - Serum Lactate Levels and Mortality in Cirrhotic Patients with Sepsis

2018 ◽  
Vol 154 (6) ◽  
pp. S-1182
Author(s):  
Laura Piccolo Serafim ◽  
Dae Hee Choi ◽  
Timothy J Weister ◽  
Patrick S. Kamath ◽  
Ognjen Gajic ◽  
...  
PEDIATRICS ◽  
1995 ◽  
Vol 96 (5) ◽  
pp. 914-917
Author(s):  
Eva Nozik Grayck ◽  
Jon N. Meliones ◽  
Frank H. Kern ◽  
Doug R. Hansell ◽  
Ross M. Ungerleider ◽  
...  

Objectives. To correlate the initial and maximal lactate levels with the occurrence of intracranial hemorrhage (ICH) and survival in patients treated with extracorporeal life support (ECLS). Design. Retrospective chart review. Setting. Pediatric intensive care unit. Patients. Eighty-two neonatal patients placed on ECLS for respiratory failure due to sepsis, meconium aspiration, or persistent pulmonary hypertension of the newborn. Measurements. The initial lactate level measured within 6 hours of initiating ECLS and the maximal lactate level measured throughout the ECLS course were collected. Lactate levels were described as mean lactate ± SE (mM). Head ultrasound reports and survival were reviewed. Platelet counts and activated clotting times (ACTs) were examined. Results. The mean initial and maximal lactate levels were higher in ECLS patients who developed ICH (initial: 10 ± 1.7 mM vs 6.4 ± 0.8 mM, p = .05 and maximal: 12.4 ± 2.5 mM vs 7.9 ± 0.8 mM, p = .04). Initial and maximal lactate levels were also elevated in nonsurvivors (initial: 11.7 ± 3 mM vs 6.4 ± 0.7 mM, p = .01 and maximal: 14.8 ± 3.3 mM vs 7.8 ± 0.8 mM, P < .01). Platelet counts and ACT did not differ in patients with and without ICH. Conclusions. Lactate is a useful marker for the development of ICH in ECLS patients. In addition, elevated lactates during ECLS identify a subgroup of patients with poor outcome. Prospective studies are needed to determine whether the incorporation of this information into pre-ECLS and ECLS management will decrease the occurrence of ICH and improve survival.


2021 ◽  
pp. 73-75
Author(s):  
Mallaiyan Manonmani ◽  
Meiyappan Kavitha

Objectives: Myocardial infarction is the most common form of coronary heart disease, the commonest cause of worldwide mortality. The present biochemical markers take atleast 6 hours for elevation following an episode of myocardial infarction. There is a need for sensitive marker for early diagnosis and prognosis. Lactate, the end product of anaerobic glycolysis is found to be elevated in many critical illnesses. Thus the study was undertaken to assess the levels of serum lactate in patients with myocardial infarction and to correlate it with the frequently used enzymatic markers for the diagnosis of myocardial infarction, i.e creatine kinase – MB and lactate dehydrogenase Methods: Fifty age and sex matched controls and fty cases of myocardial infarction were included in the study. Serum creatine kinase – MB, lactate dehydrogenase and lactate were estimated in these subjects. Results:The serum lactate levels were signicantly higher among cases when compared to controls. The serum lactate levels positively correlated with serum creatine kinase – MB among cases but not with lactate dehydrogenase. Conclusions: We conclude that serum lactate is altered in patients with myocardial infarction and may be considered as a prognostic risk factor in these patients. Further studies are needed to nd the cut-off value of serum lactate for assistance in the hemodynamic management of these patients.


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.


Author(s):  
Ifael Yerosias Mauleti ◽  
Suhendro Suhendro ◽  
Leonard Nainggolan ◽  
Martin Rumende

BACKGROUND<br />Dengue infection is an acute viral infection, in the natural history of which plasma leakage may occur, resulting in shock followed by tissue hypoxia, with death as the final outcome if not treated properly. The purpose of this study was to determine the correlation of the hematocrit, serum albumin concentration, and the presence of pleural effusion or ascites, with hyperlactatemia in adult dengue patients.<br /><br />METHODS<br />A cross-sectional study was conducted on 62 subjects. The inclusion criteria were: diagnosed dengue viral infection, age &gt;14 years, fever during three consecutive days, and hyperlactatemia. Serum albumin was measured on an Advia 1800 analyzer using the bromocresol green method. The lactate oxidase method was used to determine serum lactate levels. Pleural effusion and/or ascites was determined using an ultrasound scanner (Xario SSA-660 A, Toshiba, Japan). The Pearson correlation test was used to analyze the data.<br /> <br />RESULTS<br />There was no significant correlation between the hematocrit (r=0.11; p=0.301), serum albumin (r=0.003;p=0.981), and pleural effusion or ascites (r=0.75; p=0.692) with serum lactate levels. However, in patients aged &gt;30 years there was a significant inverse correlation between serum albumin and lactate levels (r =- 0.663;p=0.026). <br /><br />CONCLUSION<br />This study demonstrated a significant inverse correlation between albumin and serum lactate levels in dengue patients aged &gt; 30 years. This can aid in the early recognition and prompt management of at-risk patients to reduce morbidity and mortality.


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.


2019 ◽  
Vol 2019 ◽  
pp. 1-11 ◽  
Author(s):  
Eun-Ju Kim ◽  
Young-Shick Hong ◽  
Seung-Ho Seo ◽  
Seong-Eun Park ◽  
Chang-Su Na ◽  
...  

Sasang constitutional medicine classifies human beings into four types based on their physical and psychological characteristics. Despite its potential value in achieving personalized medicine, the diagnosis of sasang constitution (SC) type is complex and subjective. In this study, gas chromatography–mass spectrometry and 1H nuclear magnetic resonance–based metabolic analyses were conducted to find maker metabolites in serum and urine according to different SC types. Although some samples were overlapped on orthogonal projection to latent structure discriminant analysis score plots, serum samples showed separation between different SC types. Levels of lactate, glutamate, triglyceride, and fatty acids in serum and glycolic acid in urine of Tae-Eum type were higher than those of So-Eum and So-Yang type. Fatty acids, triglyceride, and lactate levels were found to be metabolites related to body mass index, indicating that marker metabolites for the diagnosis of SC type could be associated with obese. However, Tae-Eum type showed higher lactate levels in serum than So-Yang type for both normal weight and overweight groups, suggesting that the contents of serum lactate might be dependent on the SC type regardless of body weight. These results suggest that metabolomics analysis could be used to determine SC type.


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