Please use this identifier to cite or link to this item: https://hdl.handle.net/20.500.14356/1595
Title: Prospective Validation of a Decision Tree Model for Prediction of Severity in Acute Pancreatitis
Authors: Bohara, Tanka Prasad
Laudari, Uttam
Parajuli, Anuj
Rupakheti, Shail
Joshi, Mukund Raj
Citation: BoharaT. P., LaudariU., ParajuliA., RupakhetiS., & JoshiM. R. (2018). Prospective Validation of a Decision Tree Model for Prediction of Severity in Acute Pancreatitis. Journal of Nepal Health Research Council, 16(2), 239-244. https://doi.org/10.33314/jnhrc.v16i2.1061
Issue Date: 2018
Publisher: Nepal Health Research Council
Article Type: Original Article
Keywords: Acute pancreatitis
Decision tree
Severe acute pancreatitis
Series/Report no.: Apr-June, 2018;1061
Abstract: Abstract Background: Early identification of severe acute pancreatitis is important for early stratification, goal directed fluid therapy, rationalizing level of care to improve outcome. Various clinical, laboratory and imaging scoring system has been used to identify severe acute pancreatitis with variable results. Recently a decision tree model was proposed using serum creatinine, serum lactate dehydrogenase and oxygenation index to predict severe acute pancreatitis. This system is easy and usable at our centre. Hence, we conducted the study to validate the decision tree model prospectively. Methods: Patients admitted with a diagnosis of acute pancreatitis were included in the study. Decision tree model was used to identify patients at high and low risk for severe acute pancreatitis. Sensitivity and specificity were calculated for prediction of the decision tree model. Results: Fifty-three patients were included in the study. Fourty-one (77.4 %) patients with mild acute pancreatitis, five (9.4 %) patients had moderately severe pancreatitis and seven (13.2 %) patients had severe acute pancreatitis. Sensitivity and specificity of decision tree model to predict severity of pancreatitis was 97.83%(95 % CI – 88.47% to 99.94%) and 71.43 % % (95 % CI – 29.04% to 96.33%) respectively with positive and negative predictable value of 95.74 % % (95 % CI – 87.45% to 98.64%) and 83.33 % % (95 % CI – 40.49% to 97.35%) respectively. Conclusions: Decision tree model with serum creatinine, lactate dehydrogenase, and oxygenation index is an easy and useful tool to predict patients at high risk of developing severe acute pancreatitis. Keywords: Acute pancreatitis; decision tree; severe acute pancreatitis.
Description: Original Article
URI: http://103.69.126.140:8080/handle/20.500.14356/1595
ISSN: Print ISSN: 1727-5482; Online ISSN: 1999-6217
Appears in Collections:Vol. 16 No. 2 Issue 39 Apr-Jun 2018

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