Literature DB >> 15705999

Evaluation of capnography using a genetic algorithm to predict PaCO2.

Milo Engoren1, Michael Plewa, David O'Hara, Jeffrey A Kline.   

Abstract

INTRODUCTION: Noninvasive estimates of Paco(2) are usually done by measuring exhaled carbon dioxide at end-expiration (Petco(2)). While commonly used in studies involving healthy patients, it is less useful in sicker patients. Conditions that affect the terminal dead space and hence the accuracy of Petco(2) as a surrogate for Paco(2) may also affect other components of the capnogram. A genetic algorithm is a computer technique for discovering relationships between variables. The purpose of this study was to use a genetic algorithm to improve the precision of Paco(2) prediction in comparison to Petco(2).
METHODS: Inspiratory and expiratory volumes were measured and analyzed by the computerized capnogram. Data were recorded for 2 min. Within 5 min of recording the capnograms, arterial blood gases were obtained. After excluding artifact and incomplete capnograms, five of the remaining breaths from each patient were selected. A genetic algorithm, constructed in postfix notation, consisted of 1,000 chromosomes with genes randomly selected from the 11 capnographic data fields and mathematical operators. The algorithm was constructed on 400 breaths from 83 randomly selected patients (construction group) and tested on 160 breaths from the remaining 32 patients (test group).
RESULTS: For the construction group, the bias and precision between Petco(2) and Paco(2) were 4.3 +/- 4.9 mm Hg (mean +/- SD). For the 160 breaths in the test group, Petco(2) predicted Paco(2) with bias and precision of 2.9 +/- 4.2 mm Hg. The best chromosome found by the genetic algorithm was (10 x 5 + 5 x 5 x 5)/(10 x 10) x Petco(2) - (5 x 5 x 10 + 5 x 5)/(10 x 10) x int time + 2 x 2 x 2 x 2 + (2 x 2)/10, which reduces to 0.65 x Petco(2) - 2.75 x int time + 16.4. This produced a bias and precision of 0.9 +/- 4.1 mm Hg in the construction group and 0 +/- 3.7 mm Hg in the test group (p < 0.01).
CONCLUSIONS: In this study of nonintubated emergency department patients, a genetic algorithm produced an improvement in bias and precision of Paco(2) prediction.

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Year:  2005        PMID: 15705999     DOI: 10.1378/chest.127.2.579

Source DB:  PubMed          Journal:  Chest        ISSN: 0012-3692            Impact factor:   9.410


  4 in total

Review 1.  The Applications of Genetic Algorithms in Medicine.

Authors:  Ali Ghaheri; Saeed Shoar; Mohammad Naderan; Sayed Shahabuddin Hoseini
Journal:  Oman Med J       Date:  2015-11

Review 2.  Using the features of the time and volumetric capnogram for classification and prediction.

Authors:  Michael B Jaffe
Journal:  J Clin Monit Comput       Date:  2016-01-18       Impact factor: 2.502

3.  Carbon dioxide insufflation during colorectal endoscopic submucosal dissection for patients with obstructive ventilatory disturbance.

Authors:  Masao Yoshida; Kenichiro Imai; Kinichi Hotta; Yuichiro Yamaguchi; Masaki Tanaka; Naomi Kakushima; Kohei Takizawa; Hiroyuki Matsubayashi; Hiroyuki Ono
Journal:  Int J Colorectal Dis       Date:  2013-12-03       Impact factor: 2.571

4.  Use of genetic programming, logistic regression, and artificial neural nets to predict readmission after coronary artery bypass surgery.

Authors:  Milo Engoren; Robert H Habib; John J Dooner; Thomas A Schwann
Journal:  J Clin Monit Comput       Date:  2013-03-16       Impact factor: 2.502

  4 in total

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