Decision tree algorithms predict the diagnosis and outcome of dengue fever in the early phase of illness
Autor: | Eng Eong Ooi, Yee Sin Leo, Mark Schreiber, Jenny G. Low, Lukas B. Tanner, Yee-Ling Lai, Subhash G. Vasudevan, Lee Ching Ng, Cameron P. Simmons, Adrian Ong, Le Thi Puong, Martin L. Hibberd, Thomas Tolfvenstam |
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Jazyk: | angličtina |
Rok vydání: | 2018 |
Předmět: |
Adult
lcsh:Arctic medicine. Tropical medicine Adolescent lcsh:RC955-962 Decision tree MEDLINE Dengue virus medicine.disease_cause Dengue fever Dengue Young Adult Infectious Diseases/Viral Infections Humans Medicine Severe Dengue Young adult Disease surveillance Reverse Transcriptase Polymerase Chain Reaction business.industry lcsh:Public aspects of medicine Decision Trees Confounding Public Health Environmental and Occupational Health lcsh:RA1-1270 Dengue Virus medicine.disease Triage Infectious Diseases RNA Viral business Algorithm Algorithms Research Article Infectious Diseases/Tropical and Travel-Associated Diseases |
Zdroj: | PLoS Neglected Tropical Diseases PLoS Neglected Tropical Diseases, Vol 2, Iss 3, p e196 (2008) |
ISSN: | 1935-2727 |
Popis: | Background Dengue is re-emerging throughout the tropical world, causing frequent recurrent epidemics. The initial clinical manifestation of dengue often is confused with other febrile states confounding both clinical management and disease surveillance. Evidence-based triage strategies that identify individuals likely to be in the early stages of dengue illness can direct patient stratification for clinical investigations, management, and virological surveillance. Here we report the identification of algorithms that differentiate dengue from other febrile illnesses in the primary care setting and predict severe disease in adults. Methods and Findings A total of 1,200 patients presenting in the first 72 hours of acute febrile illness were recruited and followed up for up to a 4-week period prospectively; 1,012 of these were recruited from Singapore and 188 from Vietnam. Of these, 364 were dengue RT-PCR positive; 173 had dengue fever, 171 had dengue hemorrhagic fever, and 20 had dengue shock syndrome as final diagnosis. Using a C4.5 decision tree classifier for analysis of all clinical, haematological, and virological data, we obtained a diagnostic algorithm that differentiates dengue from non-dengue febrile illness with an accuracy of 84.7%. The algorithm can be used differently in different disease prevalence to yield clinically useful positive and negative predictive values. Furthermore, an algorithm using platelet count, crossover threshold value of a real-time RT-PCR for dengue viral RNA, and presence of pre-existing anti-dengue IgG antibodies in sequential order identified cases with sensitivity and specificity of 78.2% and 80.2%, respectively, that eventually developed thrombocytopenia of 50,000 platelet/mm3 or less, a level previously shown to be associated with haemorrhage and shock in adults with dengue fever. Conclusion This study shows a proof-of-concept that decision algorithms using simple clinical and haematological parameters can predict diagnosis and prognosis of dengue disease, a finding that could prove useful in disease management and surveillance. Author Summary Dengue illness appears similar to other febrile illness, particularly in the early stages of disease. Consequently, diagnosis is often delayed or confused with other illnesses, reducing the effectiveness of using clinical diagnosis for patient care and disease surveillance. To address this shortcoming, we have studied 1,200 patients who presented within 72 hours from onset of fever; 30.3% of these had dengue infection, while the remaining 69.7% had other causes of fever. Using body temperature and the results of simple laboratory tests on blood samples of these patients, we have constructed a decision algorithm that is able to distinguish patients with dengue illness from those with other causes of fever with an accuracy of 84.7%. Another decision algorithm is able to predict which of the dengue patients would go on to develop severe disease, as indicated by an eventual drop in the platelet count to 50,000/mm3 blood or below. Our study shows a proof-of-concept that simple decision algorithms can predict dengue diagnosis and the likelihood of developing severe disease, a finding that could prove useful in the management of dengue patients and to public health efforts in preventing virus transmission. |
Databáze: | OpenAIRE |
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