Dengue Fever Hematological Dataset: Clinical Insights for Improved Diagnosis and Patient Management

Published: 7 November 2024| Version 1 | DOI: 10.17632/6fsrsk3mb8.1
Contributors:
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, Mohammad Ashikuzzaman

Description

Data were collected from 1,523 patients at Jamalpur 250-Bedded General Hospital in Jamalpur, Bangladesh, from February 10, 2024, to September 27, 2024, following ethical guidelines with patient confidentiality protected. Each patient’s clinical and hematological profile was meticulously recorded to ensure a detailed representation of dengue's impact on hematological parameters. The dataset contains detailed hematological data of patients diagnosed with dengue fever, focusing on parameters that are crucial for diagnosis and severity assessment. It includes comprehensive blood indices like hemoglobin, total and differential white blood cell counts, RBC, and platelet counts, among others. Such data are critical for refining diagnostic criteria and developing predictive models for early detection and severity classification of dengue cases, potentially improving patient outcomes through timely interventions. Clinical Parameters Included: Age: Patient’s age (in years). Gender: Male or Female. Hemoglobin (g/dL): Levels of hemoglobin in blood. Neutrophils (%), Lymphocytes (%), Monocytes (%): White blood cell counts. RBC: Total red blood cells. Hematocrit (HCT): Proportion of blood volume occupied by RBCs. MCV (fL), MCH (pg), MCHC (g/dL): Red blood cell indices. RDW-CV (%): Red cell distribution width. Platelet Count (x10^3/µL): Total platelets in the blood. PDW (%): Platelet distribution width. MPV (fL): Mean platelet volume. PCT (%): Plateletcrit, percentage of blood occupied by platelets. WBC Count (x10^3/µL): Total white blood cells. Result: Dengue test result (Positive/Negative). Dataset Structure Format: CSV Rows: 1,523 (individual patient records) Columns: 19 (including clinical and demographic characteristics)

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Institutions

Daffodil International University

Categories

Public Health, Machine Learning, Dengue Fever

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