| Literature DB >> 19046450 |
Leo Anthony Celi1, L Christian Hinske, Gil Alterovitz, Peter Szolovits.
Abstract
INTRODUCTION: The goal of personalised medicine in the intensive care unit (ICU) is to predict which diagnostic tests, monitoring interventions and treatments translate to improved outcomes given the variation between patients. Unfortunately, processes such as gene transcription and drug metabolism are dynamic in the critically ill; that is, information obtained during static non-diseased conditions may have limited applicability. We propose an alternative way of personalising medicine in the ICU on a real-time basis using information derived from the application of artificial intelligence on a high-resolution database. Calculation of maintenance fluid requirement at the height of systemic inflammatory response was selected to investigate the feasibility of this approach.Entities:
Mesh:
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Year: 2008 PMID: 19046450 PMCID: PMC2646316 DOI: 10.1186/cc7140
Source DB: PubMed Journal: Crit Care ISSN: 1364-8535 Impact factor: 9.097
Patient variables evaluated as possible predictors of maintenance fluid requirement.
| Age | |
| Sex | |
| Weight | |
| Blood pressure | |
| Heart rate | |
| Total fluid input during the first 24 hours | |
| Total fluid output during the first 24 hours | |
| Serum creatinine, as a surrogate marker of kidney function | |
| Serum sodium | |
| Body surface area | |
| Temperature | |
| Serum albumin | |
| Serum lactate | |
| Maximum number of vasopressors and inotropes | |
| Maximum number of sedatives and narcotic agents | |
| Serum bilirubin | |
| Haemoglobin | |
| Platelet count | |
| PaO2:FiO2 ratio |
FiO2 = fraction of inspired oxygen; PaO2 = partial pressure of oxygen in arterial blood.
Figure 1Distribution of total fluid intake on day two.
Coefficients of the fitted linear regression model.
| Variables | Estimate | Standard error | p value |
| Number of vasopressors | 5.35e+02 | 2.38e+03 | 3.25e-06 |
| Maximum heart rate (beats per minute) | 1.12e+01 | 3.65 | 6.43e-09 |
| Maximum haemoglobin (mg/L) | 5.71e+01 | 8.76e+01 | 0.0021 |
| Minimum haemoglobin (mg/L) | -5.17e+02 | 9.36e+01 | 1.03e-10 |
| Variance of haemoglobin (mg/L) | -1.92e+02 | 4.72e+01 | 4.01e-08 |
| Total fluid intake on day 1 (ml) | 1.03e-01 | 2.14e-02 | 5.09e-05 |
| Total fluid output on day 1 (ml) | -1.99e-01 | 3.68e-02 | 1.50e-06 |
| Most recent platelet count (×109/L) | 1.19e+01 | 2.99 | 7.90e-08 |
| Number of sedatives | 2.74e+02 | 1.07e+02 | 7.73e-05 |
| Age (years) | -1.15e+01 | 4.68 | 0.0106 |
| Mean platelet count (×109/L) | 1.37e+01 | 2.97 | 4.17e-06 |
| Minimum serum sodium (mEq/L) | 1.68e+02 | 4.21e+01 | 7.27e-05 |
| Most recent serum sodium (mEq/L) | 8.33e+01 | 3.61+01 | 0.0212 |
| Mean serum sodium (mEq/L) | 1.67e+02 | 6.29e+01 | 0.0080 |
Figure 2Bayesian network model predicting maintenance fluid requirement on day two in the ICU. DBP = diastolic blood presure; Hb = haemoglobin; Max = maximum; Min = minimum; SBP = systolic blood pressure; Temp = temperature.
Figure 3Artificial intelligence at the point-of-care in the ICU.