Author: Ahmed, Anwar E.; Alshukairi, Abeer N.; Alâ€Jahdali, Hamdan; Alaqeel, Mody; Siddiq, Salma S.; Alsaab, Hanan A.; Sakr, Ezzeldin A.; Alyahya, Hamed A.; Alandonisi, Munzir M.; Subedar, Alaa T.; Aloudah, Nouf M.; Baharoon, Salim; Alsalamah, Majid A.; Al Johani, Sameera; Alghamdi, Mohammed G.
Title: Development of a riskâ€prediction model for Middle East respiratory syndrome coronavirus infection in dialysis patients Cord-id: wbi0ird5 Document date: 2018_4_14
ID: wbi0ird5
Snippet: Introduction The Middle East respiratory syndrome coronavirus (MERSâ€CoV) infection can cause transmission clusters and high mortality in hemodialysis facilities. We attempted to develop a riskâ€prediction model to assess the early risk of MERSâ€CoV infection in dialysis patients. Methods This twoâ€center retrospective cohort study included 104 dialysis patients who were suspected of MERSâ€CoV infection and diagnosed with rRTâ€PCR between September 2012 and June 2016 at King Fahd General H
Document: Introduction The Middle East respiratory syndrome coronavirus (MERSâ€CoV) infection can cause transmission clusters and high mortality in hemodialysis facilities. We attempted to develop a riskâ€prediction model to assess the early risk of MERSâ€CoV infection in dialysis patients. Methods This twoâ€center retrospective cohort study included 104 dialysis patients who were suspected of MERSâ€CoV infection and diagnosed with rRTâ€PCR between September 2012 and June 2016 at King Fahd General Hospital in Jeddah and King Abdulaziz Medical City in Riyadh. We retrieved data on demographic, clinical, and radiological findings, and laboratory indices of each patient. Findings A riskâ€prediction model to assess early risk for MERSâ€CoV in dialysis patients has been developed. Independent predictors of MERSâ€CoV infection were identified, including chest pain (OR = 24.194; P = 0.011), leukopenia (OR = 6.080; P = 0.049), and elevated aspartate aminotransferase (AST) (OR = 11.179; P = 0.013). The adequacy of this prediction model was good (P = 0.728), with a high predictive utility (area under curve [AUC] = 76.99%; 95% CI: 67.05% to 86.38%). The prediction of the model had optimismâ€corrected bootstrap resampling AUC of 71.79%. The Youden index yielded a value of 0.439 or greater as the best cutâ€off for high risk of MERS infection. Discussion This riskâ€prediction model in dialysis patients appears to depend markedly on chest pain, leukopenia, and elevated AST. The model accurately predicts the high risk of MERSâ€CoV infection in dialysis patients. This could be clinically useful in applying timely intervention and control measures to prevent clusters of infections in dialysis facilities or other health care settings. The predictive utility of the model warrants further validation in external samples and prospective studies.
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