| Literature DB >> 33008381 |
Guilan Kong1,2, Ke Lin3,4, Yonghua Hu5,6.
Abstract
BACKGROUND: Early and accurate identification of sepsis patients with high risk of in-hospital death can help physicians in intensive care units (ICUs) make optimal clinical decisions. This study aimed to develop machine learning-based tools to predict the risk of hospital death of patients with sepsis in ICUs.Entities:
Keywords: In-hospital mortality; Intensive care unit; Machine learning; Prediction model; Sepsis
Mesh:
Year: 2020 PMID: 33008381 PMCID: PMC7531110 DOI: 10.1186/s12911-020-01271-2
Source DB: PubMed Journal: BMC Med Inform Decis Mak ISSN: 1472-6947 Impact factor: 2.796
Relevant studies about mortality prediction for sepsis patients
| Authors | Title | Dataset | Methodology | Predictors | Outcome | Sepsis definition |
|---|---|---|---|---|---|---|
| Masson, S. et al. [ | Presepsin (soluble CD14 subtype) and procalcitonin levels for mortality prediction in sepsis: data from the Albumin Italian Outcome Sepsis trial | A multicentre, randomised Albumin Italian Outcome Sepsis trial, 100 patients | Cox regression model | Presepsin level, procalcitonin level and some covariates | 28-day/ICU/90-day mortality | Sepsis-2 |
| Adrie C. et al. [ | Model for predicting short-term mortality of severe sepsis | A multicentre database including data from 12 ICUs, 2268 patients | Generalised linear model | SAPS II and LOD scores at ICU admission, septic shock, multiple organ failure, comorbidities, procedures, agents, bacteraemia and sources of infection | 14-day mortality within ICU stay | Sepsis-2 |
| Ripoll, V.J.R. et al. [ | Sepsis mortality prediction with the Quotient Basis Kernel | MIMIC II | Support vector machines (SVMs), LR, SAPS | SOFA and SAPS scores at ICU admission | ICU mortality | Sepsis-2 |
| Fang W-F et al. [ | Development and validation of immune dysfunction score to predict 28-day mortality of sepsis patients | Sepsis patients admitted to ICU at a hospital in Taiwan, 151 patients | LR | Monocyte HLA-DR* expression, plasma G-CSF* level, plasma IL*-10 level, and serum SeMo* ratio | 28-day mortality | Sepsis-3 |
| Xie, Y. et al. [ | Using clinical features and biomarkers to predict 60-day mortality of sepsis patients | Protocol-based care in early septic shock trial, around 530 patients | LR | Clinical features and biomarkers obtained during the first 24 h of hospital admission | 60-day mortality | Not mentioned |
| Poucke, S.V. et al. [ | Scalable predictive analysis in critically ill patients using a visual open data analysis platform | MIMIC II | Naïve Bayes, LR, RF, AdaBoost, Bagging, Stacking, SVM | Demographics, comorbidities, types of care unit, platelet count | ICU mortality | NA |
Zhang, Z. & Hong, Y [ | Development of a novel score for the prediction of hospital mortality in patients with severe sepsis: the use of electronic healthcare records with LASSO regression | MIMIC III | LASSO, LR | Demographics, clinical and laboratory variables recorded during the first 24 h in ICU | Hospital mortality | Sepsis-2 |
| Taylor, R.A. et al. [ | Prediction of in-hospital mortality in emergency department patients with sepsis: a local big data-driven, machine learning approach | Adult ED* visits over 12 months, 4676 patients | RF, CART, LR | Demographics, previous health status, ED health status, ED services rendered and operational details | Hospital mortality | Sepsis-2 |
| Pregernig, A. et al. [ | Prediction of mortality in adult patients with sepsis using six biomarkers: a systematic review and meta-analysis | 44 articles in English | Qualitative analysis, meta-analysis | Angiopoietin 1 and 2, HMGB1*, sRAGE*, sTREM*-1, suPAR* | 28-day/30-day/ICU/hospital/90-day mortality | Sepsis-1/Sepsis-2/Sepsis-3 |
*Abbreviations: HLA-DR Human leukocyte antigen D-related, *G-CSF Granulocyte-colony stimulating factor, IL Interleukin, SeMo Segmented neutrophil-to-monocyte, ED Emergency department, HMGB1 High mobility group box 1 protein, sRAGE soluble receptor for advanced glycation endproducts, sTREM soluble triggering receptor expressed on myeloid cells 1, suPAR soluble urokinase-type plasminogen activator receptor
Predictor variables used in this study
| Predictors | |
|---|---|
| Heart rate* | Elixhauser comorbidity index |
| Systolic blood pressure* | Congestive heart failure |
| Diastolic blood pressure* | Cardiac arrhythmias |
| Mean blood pressure* | Valvular heart disease |
| Respiratory rate* | Pulmonary circulation |
| Temperature* | Peripheral vascular |
| SpO2* (blood oxygen saturation) | Hypertension |
| Total CO2* | Other neurological diseases |
| pCO2* (partial pressure of CO2) | Chronic obstructive pulmonary disease |
| pH* (acidity in the blood) | Diabetes without complications |
| Urine output | Diabetes with complications |
| Glasgow Coma Score (GCS) | Hypothyroidism |
| GCS (eye) | Renal failure |
| GCS (motor) | Liver disease |
| GCS (verbal) | Metastatic cancer |
| Anion gap* | Coagulopathy |
| Bicarbonate* | Obesity |
| Creatinine* | Fluid electrolyte |
| Chloride* | Alcohol abuse |
| Glucose* | Depression |
| Haematocrit* | Renal replacement therapy |
| Haemoglobin* | |
| Lactate* | Gender |
| Platelet* | Weight loss |
| Potassium* | Ventilation |
| Partial thromboplastin time* | Age |
| INR* | Weight |
| Prothrombin time* | SAPS II score (first 24 h in the ICU) |
| Sodium* | SOFA score (first 24 h in the ICU) |
| Blood urea nitrogen (BUN)* | |
| WBC* | |
| Acute kidney injury | |
*: each predictor marked with * means that it is a time-stamped variable, and its corresponding minimum and maximum values within the first 24 h in the ICU were used as inputs in model development
Variables and score assignment in SAPS II
| Variables | Maximum scores | |
|---|---|---|
| Acute physiology | Temperature | 3 |
| Heart rate | 11 | |
| Systolic blood pressure | 13 | |
| WBC | 12 | |
| Bilirubin | 9 | |
| Serum sodium | 5 | |
| Serum potassium | 3 | |
| Serum bicarbonate | 6 | |
| BUN | 10 | |
| Urine output | 11 | |
| PaO2aor FiO2a | 11 | |
| GCS | 26 | |
| Chronic health status | AIDSa | 17 |
| Haematologic malignancy | 10 | |
| Metastatic cancer | 9 | |
| Other | Age | 18 |
| Type of admission | 8 | |
| Overall score | 182 | |
aAbbreviations: AIDS Acquired immunodeficiency syndrome, PaO Partial pressure of oxygen, FiO Fraction of inspired oxygen
Characteristics of included sepsis patients
| Items | Statistics | ||
|---|---|---|---|
| All | Survivors | Decedents | |
| Total number | 16,688 | 13,739 | 2949 |
| Age (year) | 65.61 ± 15.01 | 65.00 ± 15.11 | 68.46 ± 14.19 |
| Gender | |||
| Male | 9087 (54.5%) | 7434 (54.1%) | 1653 (56.05%) |
| Female | 7601 (45.5%) | 6305 (45.9%) | 1296 (43.95%) |
| SOFA score, 1st day of ICU admission | 5.57 ± 3.06 | 5.10 ± 2.67 | 7.77 ± 3.72 |
| SAPS II score, 1st day of ICU admission | 40.87 ± 13.51 | 38.55 ± 12.18 | 51.68 ± 14.13 |
| Hospital length of stay (day) | 14.42 ± 14.77 | 14.55 ± 14.26 | 13.82 ± 16.96 |
| ICU length of stay (day) | 6.41 ± 8.52 | 6.07 ± 8.30 | 7.99 ± 9.34 |
| Number of deaths | 2949 (17.7%) | NA | NA |
Performance comparison of five models
| Model | Overall performance | Discrimination | ||||||
|---|---|---|---|---|---|---|---|---|
| Brier score | 95% CI | AUROC | 95% CI | Sensitivity | 95% CI | Specificity | 95% CI | |
| LASSO | 0.108 | 0.107–0.109 | 0.829 | 0.827–0.831 | 0.744 | 0.721–0.767 | 0.754 | 0.731–0.777 |
| GBM | 0.104 | 0.102–0.105 | 0.845 | 0.837–0.853 | 0.771 | 0.750–0.792 | 0.755 | 0.722–0.789 |
| RF | 0.109 | 0.108–0.109 | 0.829 | 0.823–0.834 | 0.765 | 0.756–0.774 | 0.740 | 0.719–0.761 |
| LR | 0.107 | 0.105–0.108 | 0.833 | 0.830–0.838 | 0.760 | 0.740–0.780 | 0.748 | 0.724–0.772 |
| SAPS II | 0.146 | 0.142–0.150 | 0.77 | 0.760–0.780 | 0.697 | 0.668–0.725 | 0.714 | 0.695–0.734 |
Fig. 1Calibration plots of the LASSO, LR, SAPS II, RF and GBM models