Machine Learning Consensus Clustering Approach for Patients with Lactic Acidosis in Intensive Care Units

被引:8
|
作者
Pattharanitima, Pattharawin [1 ]
Thongprayoon, Charat [2 ]
Petnak, Tananchai [3 ]
Srivali, Narat [4 ]
Gembillo, Guido [5 ]
Kaewput, Wisit [6 ]
Chesdachai, Supavit [7 ]
Vallabhajosyula, Saraschandra [8 ]
O'Corragain, Oisin A. [9 ]
Mao, Michael A. [10 ]
Garovic, Vesna D. [2 ]
Qureshi, Fawad [2 ]
Dillon, John J. [2 ]
Cheungpasitporn, Wisit [2 ]
机构
[1] Thammasat Univ, Fac Med, Dept Internal Med, Pathum Thani 12121, Thailand
[2] Mayo Clin, Div Nephrol & Hypertens, Dept Med, Rochester, MN 55905 USA
[3] Mahidol Univ, Ramathibodi Hosp, Fac Med, Div Pulm & Pulm Crit Care Med, Bangkok 10400, Thailand
[4] St Agnes Hosipital, Div Pulm Med, Baltimore, MD 21229 USA
[5] Univ Messina, Dept Clin & Expt Med, Unit Nephrol & Dialysis, I-98125 Messina, Italy
[6] Phramongkutklao Coll Med, Dept Mil & Community Med, Bangkok 10400, Thailand
[7] Mayo Clin, Div Infect Dis, Dept Med, Rochester, MN 55905 USA
[8] Wake Forest Univ, Dept Med, Sect Cardiovasc Med, Bowman Gray Sch Med, Winston Salem, NC 27101 USA
[9] Temple Univ Hosp & Med Sch, Dept Thorac Med & Surg, Philadelphia, PA 19140 USA
[10] Mayo Clin, Div Nephrol & Hypertens, Dept Med, Jacksonville, FL 32224 USA
来源
JOURNAL OF PERSONALIZED MEDICINE | 2021年 / 11卷 / 11期
关键词
lactic acid; lactic acidosis; lactate; hyperlactatemia; clustering; intensive care unit; machine learning; artificial intelligence; critical care; critical care medicine; nephrology; precision medicine; personalized medicine; individualized medicine; BLOOD LACTATE LEVELS; SERUM LACTATE; ORGAN FAILURE; BASE DEFICIT; OCCULT HYPOPERFUSION; CARDIAC-SURGERY; TRAUMA PATIENTS; CLASS DISCOVERY; MORTALITY; PREDICTOR;
D O I
10.3390/jpm11111132
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
Background: Lactic acidosis is a heterogeneous condition with multiple underlying causes and associated outcomes. The use of multi-dimensional patient data to subtype lactic acidosis can personalize patient care. Machine learning consensus clustering may identify lactic acidosis subgroups with unique clinical profiles and outcomes. Methods: We used the Medical Information Mart for Intensive Care III database to abstract electronic medical record data from patients admitted to intensive care units (ICU) in a tertiary care hospital in the United States. We included patients who developed lactic acidosis (defined as serum lactate & GE; 4 mmol/L) within 48 h of ICU admission. We performed consensus clustering analysis based on patient characteristics, comorbidities, vital signs, organ supports, and laboratory data to identify clinically distinct lactic acidosis subgroups. We calculated standardized mean differences to show key subgroup features. We compared outcomes among subgroups. Results: We identified 1919 patients with lactic acidosis. The algorithm revealed three best unique lactic acidosis subgroups based on patient variables. Cluster 1 (n = 554) was characterized by old age, elective admission to cardiac surgery ICU, vasopressor use, mechanical ventilation use, and higher pH and serum bicarbonate. Cluster 2 (n = 815) was characterized by young age, admission to trauma/surgical ICU with higher blood pressure, lower comorbidity burden, lower severity index, and less vasopressor use. Cluster 3 (n = 550) was characterized by admission to medical ICU, history of liver disease and coagulopathy, acute kidney injury, lower blood pressure, higher comorbidity burden, higher severity index, higher serum lactate, and lower pH and serum bicarbonate. Cluster 3 had the worst outcomes, while cluster 1 had the most favorable outcomes in terms of persistent lactic acidosis and mortality. Conclusions: Consensus clustering analysis synthesized the pattern of clinical and laboratory data to reveal clinically distinct lactic acidosis subgroups with different outcomes.
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页数:15
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