| Literature DB >> 36253753 |
Fengming Ding1,2, Lei Han1, Dongning Yin1, Yan Zhou1,2, Yong Ji1,2, Pengyu Zhang2,3, Wensheng Wu4, Jijing Chen5, Zufang Wang6, Xinxin Fan7, Guoqing Zhang8, Min Zhang9.
Abstract
BACKGROUND: Acute febrile respiratory illness (AFRI) patients are susceptible to pneumonia and suffer from significant morbidity and mortality throughout the world. In primary care settings, the situation is worse. Limited by computerized tomography resources and physician experiences, AFRI patients in primary care settings may not be diagnosed appropriately, which would affect following treatment. In this study, we aimed to develop and validate a simple prediction model to help physicians quickly identify AFRI patients of pneumonia risk in primary care settings.Entities:
Keywords: Acute febrile respiratory illness; Pneumonia; Prediction; Risk factor
Mesh:
Substances:
Year: 2022 PMID: 36253753 PMCID: PMC9576309 DOI: 10.1186/s12916-022-02552-5
Source DB: PubMed Journal: BMC Med ISSN: 1741-7015 Impact factor: 11.150
Fig. 1The diagram for the flow of participants through the study. A The development data were collected in Shanghai fever clinics between January 22 and February 6, 2020. B The validation data were collected in primary care settings from 5 different provinces in China between March 1, 2020, to December 31, 2021. AFRI, acute febrile respiratory illness; CT, computerized tomography
Clinical characteristics and blood test results of patients with and without pneumonia in fever clinics
| No pneumonia | Pneumonia | ||
|---|---|---|---|
| Age, years (SD) | 40.1 (16.2) | 50.9 (19.1) | < 0.0001 |
| Gender, male:female | 1:1.07 | 1.18:1 | 0.1347 |
| Comorbidities | |||
| COPD, | 20 (4.0) | 11 (4.8) | 0.2632 |
| Bronchiectasis, | 8 (1.6) | 7 (3.1) | 0.1922 |
| Diabetes, | 13 (2.6) | 11 (4.8) | 0.1163 |
| Hypertension, | 47 (9.4) | 26 (11.5) | 0.3932 |
| Cardiovascular disease, | 15 (3.0) | 13 (5.7) | 0.0766 |
| Renal disease, | 5 (1.0) | 4 (1.8) | 0.3891 |
| Hepatic disease, | 3 (0.6) | 5 (2.2) | 0.0549 |
| Cancer, | 5 (1.0) | 6 (2.6) | 0.0926 |
| Symptoms | |||
| Duration of fever, days (SD) | 1.8 (0.7) | 2.5 (0.8) | < 0.0001 |
| Dry cough, | 287 (58.4) | 145 (63.9) | 0.0993 |
| Purulent sputum, | 41 (8.2) | 86 (37.9) | < 0.0001 |
| Sore throat, | 227 (45.4) | 88 (38.8) | 0.0943 |
| Running nose/nasal congestion, | 114 (22.8) | 45 (19.8) | 0.3683 |
| Dyspnea, | 9 (1.8) | 105 (46.3) | < 0.0001 |
| Thoracic pain, | 136 (27.2) | 146 (64.3) | < 0.0001 |
| myalgia, | 232 (46.4) | 112 (49.3) | 0.4620 |
| Nausea, | 149 (29.8) | 49 (21.6) | 0.0211 |
| Diarrhea, | 91 (18.2) | 43 (18.9) | 0.8108 |
| Headache, | 97 (19.4) | 62 (27.3) | 0.0168 |
| Physical signs | |||
| Fever, ℃ (SD) | 38.7 (0.6) | 38.8(0.6) | 0.0151 |
| Respiration rates > 20/min, | 4 (0.8) | 82 (36.1) | < 0.0001 |
| Pulse rates, > 100/min, | 352 (70.4) | 168 (74.0) | 0.3177 |
| Pulse SaO2%, (SD) | 98.1 (1.8) | 97.0 (3.2) | 0.1980 |
| Blood parameters | |||
| Red blood cell, × 1012/L (SD) | 4.6 (0.5) | 4.5 (0.7) | 0.0574 |
| Hemoglobin, g/L (SD) | 139.3 (17.3) | 136.3 (19.7) | 0.0510 |
| White blood cell, × 109/L (SD) | 8.1 (3.6) | 8.4 (3.9) | 0.1507 |
| Neutrophils, × 109/L (SD) | 5.7 (3.3) | 6.2 (3.6) | 0.0675 |
| Lymphocytes, × 109/L (SD) | 1.6 (0.8) | 1.5 (0.8) | 0.0225 |
| Monocytes, × 109/L (SD) | 0.5 (0.3) | 0.6 (0.3) | 0.0101 |
| Eosinophils, × 109/L (SD) | 0.1 (0.1) | 0.1 (0.1) | 0.0566 |
| Basophils, × 109/L (SD) | 0.0 (0.1) | 0.0 (0.1) | 0.5344 |
| Thrombocyte, × 109/L (SD) | 163.9 (55.8) | 162.0 (59.8) | 0.6621 |
| Neutrophils %, (SD) | 68.5 (12.4) | 71.6 (12.7) | 0.0019 |
| Lymphocytes %, (SD) | 22.7 (10.7) | 19.6 (10.6) | 0.0003 |
| Monocytes%, (SD) | 7.2 (3.3) | 7.6 (3.3) | 0.1823 |
| Eosinophils%, (SD) | 1.2 (1.4) | 0.9 (1.2) | 0.0064 |
| Basophils%, (SD) | 0.3 (0.6) | 0.3 (0.6) | 0.4440 |
| Hematocrit%, (SD) | 43.4 (4.9) | 41.9 (5.5) | 0.0002 |
| C-reactive protein, mg/l (SD) | 17.7 (35.5) | 42.1 (56.8) | < 0.0001 |
Fig. 2Development of a clinical model for pneumonia prediction in acute febrile patients. The odd ratios (A) and predictive values (B) of clinical characteristics were calculated for the prediction of pneumonia. Dyspnea and respiration rates > 20/min were two predictors that showed high odd ratios and had good performance on both PPV and NPV. C ROC curves for pneumonia prediction were analyzed among blood parameters. In these parameters, CRP yielded significantly higher accuracy than other parameters, with an AUC of 0.7249. D Predictive values of “Dyspnea + RR > 20/min” model and “Dyspnea + RR > 20/min + CRP” model were compared for pneumonia. The addition of CRP significantly improved the AUC from 0.7900 to 0.8716 (P < 0.01). CRP, C-reactive protein; RR, respiration rates; ROC, receiver operating characteristic; AUC, area under the curve; PPV, positive predictive value; NPV, negative predictive value
Fig. 3The value of DRC model (dyspnea, respiration rates > 20/min, and C-reactive protein > 20 mg/l) for pneumonia prediction in external validation population. A Venn diagrams showed the overlaps among patients with dyspnea, respiration rates > 20/min, and C-reactive protein > 20 mg/l. B ROC curve of DRC model showed the predictive accuracy was highest when choosing at least one positive item (1 score) as cut-off point. C The numbers of AFRI patients with different DRC scores were summarized in different pneumonia-severity groups. The average DRC scores in each severity group increased with the elevation of patients’ PSI classes. D The numbers of infected lung lobes increased with the rise of DRC scores. Data were presented as mean ± SD. *P < 0.01. E The numbers of AFRI patients with different DRC scores were summarized according to different respiratory pathogens. F ROC curves of DRC model and its simplified form, DR model (dyspnea and respiration rates > 20/min), for pneumonia prediction. For bacterial pneumonia, the AUC of the DR model was significantly less than that of the DRC model (P < 0.01). However, for viral pneumonia, no significant difference was found in the AUCs between two models. RR, respiration rates; CRP, C-reactive protein; ROC, receiver operating characteristic; AFRI, acute febrile respiratory illness; PSI, pneumonia severity index; AUC, area under curve