scholarly journals Complete Blood Count Parameters Outperform Putative Inflammatory Markers in Predicting COVID-19 Mortality: A Multimodal Machine Learning Model

Blood ◽  
2021 ◽  
Vol 138 (Supplement 1) ◽  
pp. 2967-2967
Author(s):  
Precious Idogun ◽  
John Sia ◽  
Mindy Ward ◽  
Dillan Patel ◽  
Wilhelmine Wiese-Rometsch ◽  
...  

Abstract Introduction: SARS-CoV-2 evoked immunodysregulation drives inflammation, morbidity, and mortality across COVID-19 presentation spectrum. We sought to identify baseline cell counts and proportions reported with a complete blood count (CBC) that contribute independent information to a model predicting mortality in hospitalized patients with laboratory confirmed SARS-CoV-2 infection. Such a model may complement or improve presentation risk stratification informed by putative inflammatory markers. Methods: Our retrospective design, analyses and interpretations followed constructs detailed in the Strengthening the Reporting of Observational Studies in Epidemiology reporting guideline. Under IRB exemption, discharge medical electronic health records underwent extraction of administrative and clinical data. Demographics, anthropometrics, vital signs, laboratory test and ICD-10-CM-based Elixhauser comorbidity categories were included. Univariate logistic regression was used to identify CBC parameters and attendant ratios associated (p<.05) with hospital mortality. Generalized regression with adaptive LASSO modeling was used to evaluate explanatory probability while eliminating collinearities in identified CBC parameters (individual and ratio) associated with mortality while controlling age, sex, race, baseline vital signs, Elixhauser comorbidities and COVID-19 epoch quarters / treatment. Additional analysis with Bootstrap Forest (BF) was employed to evaluate aggregated synergies and retain parameters that optimized generalized RSquared representing multivariate prediction accuracy and explained variance proportion (EV%) in mortality provided by each variable. Further BF analysis was used to examine relative magnitude of EV% versus putative COVID-19 inflammatory markers. CBC variables included in final BF model were temporally parsed in 24h intervals then pooled when measured after 120h since first vital sign at hospitalization. Results were averaged when a patient underwent multiple assays within an interval. A two-way ANOVA was employed to compare survival vs. non-survival pathways. Results: Among patients consecutively discharged between March 14, 2020 through May 31, 2021, 208 (10 %) of 2153 died. Survivor vs. non-survivor patient and clinical characteristics are summarized in Table 1. CBC parameters identified as independently associated with hospital mortality included WBC, lymphocytes, bands, segmented neutrophils, monocytes, and RDW-CV. (Table 2) Ratios of CBC parameters associated with mortality included AMC/ALC and APC/ALC (Table 2). Results of BF EF% modeling including CBC parameters respectively without (Rsquare = 0.65) and with (Rsquare = 0.70) inclusion of putative inflammatory markers are illustrated in Figure 1a and 1b. Inflammatory markers alone exhibited lowest Rsquare (0.52) (Figure 1c). Figure 2 illustrates temporal kinetics of modeled CBC parameters across hospitalization. Intergroup differences at baseline were sustained, save for RDW-CV after 5-days. Conclusions: Machine learning approaches identified several CBC parameters measured at presentation that when modeled with putative COVID-19 inflammatory markers, enhanced early prediction of hospital mortality. CBC parameters are usually more often measured compared to other inflammatory markers that show COVID-19 severity and serve as an easily obtainable source of information to determine which patients may require a higher level of care before clinical symptoms follow. This includes progression to critical illness and hospital mortality. We recommend that CBC parameters, especially bands, APC/ALC ratio and AMC/ALC ratio be considered for baseline risk stratification of COVID-19 severity, as these trends are sustained at least 5-days after hospitalization. Figure 1 Figure 1. Disclosures No relevant conflicts of interest to declare.

2021 ◽  
Vol 3 (1) ◽  
pp. 138-142
Author(s):  
K. O. Isezuo ◽  
U. M. Sani ◽  
U.M Waziri ◽  
B. I. Garba ◽  
M. Amodu-Sanni ◽  
...  

Severe acute malnutrition (SAM) is a major cause of mortality among children in Nigeria. Majority of affected children die from sepsis related complications. The complete blood count includes inflammatory markers which have been found to be useful in predicting sepsis and mortality in children, but these findings have not been corroborated in our population. The aim of this study was to compare the haematological profile and inflammatory markers of severely malnourished children to age matched controls admitted for febrile illnesses. It was a cross sectional study carried out in the emergency paediatric unit of Usmanu Danfodiyo University Teaching Hospital, Sokoto. Severely malnourished children aged 6 months to 5 years and a comparative cohort who were not severely malnourished were consecutively recruited as they presented for admission. Relevant data were entered into a proforma and blood samples taken for complete blood count amongst others. Total and differential white cell counts, lymphocyte-neutrophil ratio and platelet indices were compared. There were 64 children comprising 32 severely malnourished and 32 well-nourished children. Mean white cell count, absolute lymphocyte and monocytes were significantly higher among the malnourished while mean platelet volume (MPV) and platelet distribution width (PDW) were significantly lower for the malnourished subjects. There were eight mortalities all among the malnourished children and mean neutrophil count was significantly higher among the mortalities. In conclusion, severely malnourished children had more lymphocytosis, however, mortality was associated with neutrophilia. Platelet indices of inflammation were lower in malnourished than non-malnourished subjects.


Uro ◽  
2021 ◽  
Vol 1 (2) ◽  
pp. 39-44
Author(s):  
Mehmet Gürkan Arıkan ◽  
Göktan Altuğ Öz ◽  
Nur Gülce İşkan ◽  
Necdet Süt ◽  
İlkan Yüksel ◽  
...  

There have been few studies reported with conflicting results in the use of neutrophil-lymphocyte ratio (NLR), platelet-lymphocyte ratio (PLR), redcell-distribution-width (RDW), etc. for predicting prognosis and differential diagnosis of adrenal tumors. The aim of this study is to investigate the role of inflammatory markers through a complete blood count, which is an easy access low-cost method, for the differential diagnosis of adrenocortical adenoma (ACA), adrenocortical carcinoma (ACC), and pheochromocytoma. The data of patients who underwent adrenalectomy between the years of 2010–2020 were retrospectively analyzed. Systemic hematologic inflammatory markers based on a complete blood count such as neutrophil ratio (NR), lymphocyte ratio (LR), NLR, PLR, RDW, mean platelet volume (MPV), and maximum tumor diameter (MTD) were compared between the groups. A statistically significant difference was found between the three groups in terms of PLR, RDW, and MTD. With post-hoc tests, a statistically significant difference was found in PLR and MTD between the ACA and ACC groups. A statistically significant difference was found between the ACA and pheochromocytoma groups in PLR and RDW values. In conclusion, it could be possible to plan a more accurate medical and surgical approach using PLR and RDW, which are easily calculated through an easy access low-cost method such as a complete blood count, together with MTD in the differential diagnosis of ACC, ACA, and pheochromocytoma.


Blood ◽  
2016 ◽  
Vol 128 (22) ◽  
pp. 5518-5518
Author(s):  
Robin Boutault ◽  
Sebastien Tremblais ◽  
Mathilde De Oliveira Lopes ◽  
Pierre Peterlin ◽  
Yannick Le Bris ◽  
...  

Abstract A prospective study was performed over one year at Nantes University Hospital in France, in order to investigate whether suspected myelodysplastic syndromes (MDS) could be detected on a complete blood count (CBC), the most rapid laboratory investigation. Indeed, the recently developed XN-10® (Sysmex, Kobe, Japan), provides novel CBC parameters witch could be useful to discriminate such patients from normal samples or from cytopenia of other etiology. Seventy-nine patients were enrolled in the study, for whom a diagnosis of MDS was concluded based on CBC, bone marrow smears examination and karyotype. All patients were free of treatment, including transfusions, at inclusion. They were 40 men and 39 women with a median age of 77,9 years (range 36,4-92,4). CBC were performed on a Sysmex analyzer XN-10®, including investigation of reticulocytes and fluorimetric analysis of platelets. For comparison with normal values, results from 776 healthy samples, for which CBC were performed on the same analyzer and generated no flag, were used. All had parameters within the normal range according to age. The classical parameters of hemoglobin level, Mean Corpuscular Volume (MCV), reticulocytes, platelets and neutrophil counts were recorded. In addition, the extra-parameters, immature reticulocytes fraction (IRF%), platelets by fluorescence (PLT-F) and immature platelets fraction (IPF%), were taken into account. The neutrophils median position on the three axes as well as their dispersion (Neut-WX) were also measured by the analyser. The primary end-point was to discriminate between MDS and healthy patients and the secondary end-point was to distinguish MDS with excess blasts, MDS with multilineage dysplasia and MDS with single lineage dysplasia within the MDS group and by comparison with controls. According to the WHO 2016 classification, 27 patients in the cohort had MDS with excess blasts, 26 MDS with multilineage dysplasia (among whom 7 had ring sideroblasts [RS], group 2), 16 MDS-RS and single lineage dysplasia, 7 MDS with single lineage dysplasia and 3 MDS with isolated del(5q). Forty-four patients had a normal karyotype and 28 displayed anomalies classically reported in MDS, including 5 complex karyotypes. Among the latter, 4 were associated with MDS with excess blasts. Both classical and extra parameters indeed showed significant differences between the subgroups tested. Among the whole group of MDS patients, a number of parameters of all lineages were statistically different from the healthy cohort. The median level of hemoglobin was 9,8 g/dL (range 4,7-14,9), (p<0,0001), the median MCV 104,3 fL (range 75,4-123,9; p<0,0001), reticulocyte counts 44,3x109/L (range 8-165,9; p=0,041) and IRF% 16,7% (range 2,4-50,9; p<0,0001). An hemoglobin value below 11,5 g/dL was strongly suggestive of MDS with a sensitivity of 81% and specificity of 100%. The median platelet count was 164x109/L (range 8-505; p<0,0001) and median IPF% 8,8% (1,2-42; p<0,0001). Among leukocyte parameters, the MDS median neutrophil count was significantly lower at 2,15x109/L (range 0,17-13,67; p<0,001) and the Neut-WX value increased above 350. The latter, by itself, allowed to make a diagnosis of MDS with a sensitivity of 73,1% and a specificity of 96,9%. When considering the three MDS subgroups of MDS with excess blasts, multilineage or single lineage dysplasia, although each of them was significantly different from controls for hemoglobin levels, MCV, IRF% and neutrophil counts (p<0,0001), they could not be discriminated by these parameters. In the subgroup of MDS with single lineage dysplasia, platelet counts were similar to those of controls, yet significantly higher than for MDS with excess blast or with multilineage dysplasia (p=0,004 and p=0,029 respectively). Taken together, this study demonstrates that a simple CBC allows to screen for MDS using thresholds of 11,5 g/dL for hemoglobin and of 350 for Neut-WX. Blood smear examination should be performed in this situation even if the XN-10® analyzer does not raise an alarm, especially in unknown older patients. Disclosures No relevant conflicts of interest to declare.


2021 ◽  
Vol 2021 ◽  
pp. 1-7
Author(s):  
Mattia Bellan ◽  
Danila Azzolina ◽  
Eyal Hayden ◽  
Gianluca Gaidano ◽  
Mario Pirisi ◽  
...  

Introduction. The clinical course of Coronavirus Disease 2019 (COVID-19) is highly heterogenous, ranging from asymptomatic to fatal forms. The identification of clinical and laboratory predictors of poor prognosis may assist clinicians in monitoring strategies and therapeutic decisions. Materials and Methods. In this study, we retrospectively assessed the prognostic value of a simple tool, the complete blood count, on a cohort of 664 patients ( F 260; 39%, median age 70 (56-81) years) hospitalized for COVID-19 in Northern Italy. We collected demographic data along with complete blood cell count; moreover, the outcome of the hospital in-stay was recorded. Results. At data cut-off, 221/664 patients (33.3%) had died and 453/664 (66.7%) had been discharged. Red cell distribution width (RDW) ( χ 2 10.4; p < 0.001 ), neutrophil-to-lymphocyte (NL) ratio ( χ 2 7.6; p = 0.006 ), and platelet count ( χ 2 5.39; p = 0.02 ), along with age ( χ 2 87.6; p < 0.001 ) and gender ( χ 2 17.3; p < 0.001 ), accurately predicted in-hospital mortality. Hemoglobin levels were not associated with mortality. We also identified the best cut-off for mortality prediction: a NL   ratio > 4.68 was characterized by an odds ratio for in-hospital mortality   OR = 3.40 (2.40-4.82), while the OR for a RDW > 13.7 % was 4.09 (2.87-5.83); a platelet   count > 166,000 /μL was, conversely, protective (OR: 0.45 (0.32-0.63)). Conclusion. Our findings arise the opportunity of stratifying COVID-19 severity according to simple lab parameters, which may drive clinical decisions about monitoring and treatment.


PLoS ONE ◽  
2021 ◽  
Vol 16 (4) ◽  
pp. e0249285
Author(s):  
Limin Yu ◽  
Alexandra Halalau ◽  
Bhavinkumar Dalal ◽  
Amr E. Abbas ◽  
Felicia Ivascu ◽  
...  

Background The Coronavirus disease 2019 (COVID-19) pandemic has affected millions of people across the globe. It is associated with a high mortality rate and has created a global crisis by straining medical resources worldwide. Objectives To develop and validate machine-learning models for prediction of mechanical ventilation (MV) for patients presenting to emergency room and for prediction of in-hospital mortality once a patient is admitted. Methods Two cohorts were used for the two different aims. 1980 COVID-19 patients were enrolled for the aim of prediction ofMV. 1036 patients’ data, including demographics, past smoking and drinking history, past medical history and vital signs at emergency room (ER), laboratory values, and treatments were collected for training and 674 patients were enrolled for validation using XGBoost algorithm. For the second aim to predict in-hospital mortality, 3491 hospitalized patients via ER were enrolled. CatBoost, a new gradient-boosting algorithm was applied for training and validation of the cohort. Results Older age, higher temperature, increased respiratory rate (RR) and a lower oxygen saturation (SpO2) from the first set of vital signs were associated with an increased risk of MV amongst the 1980 patients in the ER. The model had a high accuracy of 86.2% and a negative predictive value (NPV) of 87.8%. While, patients who required MV, had a higher RR, Body mass index (BMI) and longer length of stay in the hospital were the major features associated with in-hospital mortality. The second model had a high accuracy of 80% with NPV of 81.6%. Conclusion Machine learning models using XGBoost and catBoost algorithms can predict need for mechanical ventilation and mortality with a very high accuracy in COVID-19 patients.


2019 ◽  
Vol 143 (10) ◽  
pp. 1234-1245 ◽  
Author(s):  
Laura Stephens ◽  
Nicholas J. Bevins ◽  
Hans-Inge Bengtsson ◽  
H. Elizabeth Broome

Context.— Stand-alone clinical sites (eg, infusion centers) are becoming increasingly common. These sites require timely hematology analysis. Here we compare performance and costs of currently available analysis configurations with special focus on a proposed alternative using a minimal hematology analyzer plus a digital imaging device, allowing for remote oversight and interpretation. Objectives.— To determine whether low-volume laboratories might realize savings while gaining function by substituting commonly used configurations with a proposed alternative. Design.— To evaluate the performance of the proposed alternative configuration, blood counts with automated differentials produced by a Sysmex XE5000 (complete blood count reference method) were compared with cell counts from the Sysmex pocH-100i, CellaVision DM96 preclassified differentials, and DM96 reclassified differentials (differential reference method) by using standard regression analyses, 95% CIs, and truth tables. Financial cost modeling used staffing practices, test volumes, and smear production rates observed at remote clinics performing on-site hematology analysis within the University of California at San Diego Health system. Results.— Differential blood count parameters showed excellent correlation between the XE5000 and preclassification DM96 with R2 &gt; 0.95. For blasts/abnormal cells, immature granulocytes, and nucleated red blood cells, the DM96 showed higher sensitivity and similar specificity to the XE5000. Cost modeling revealed that decreased personnel costs through remote monitoring of results facilitated by the DM96 would lead to lower operational costs relative to more conventional analysis configurations. Conclusions.— A digital imaging instrument with an inexpensive hematology analyzer provides similar information to a complex hematology analyzer and allows remote review of the blood smear findings by experts, leading to significant cost savings.


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