Assessing the Predictive Value of Haematological Parameters (NLR, LMR, PLR) for COVID-19 Disease Severity as quantified by CT Severity Scores: A Prospective Cohort Study
Introduction: In the relentless global battle against the Coronavirus Disease-2019 (COVID-19) pandemic, accurate prediction of disease severity remains a critical challenge, with profound implications for patient outcomes and healthcare resource allocation. As the virus continues to evolve and pose...
| Published in: | Journal of Clinical and Diagnostic Research |
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| Format: | Article |
| Language: | English |
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JCDR Research and Publications Private Limited
2024-05-01
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| Online Access: | https://jcdr.net/articles/PDF/19433/69032_CE[Ra1]_F(IS)_QC_REF_PAT(AN_IS)_PF1(AG_DK)_PFA(OM)_PB(AG_OM)_PN(OM).pdf |
| _version_ | 1850066935593566208 |
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| author | Kovuri Umadevi Lavanya Motrapu Kasturi Dinesh Nagarjuna Chary Rajarikam Mohd Imran Ali |
| author_facet | Kovuri Umadevi Lavanya Motrapu Kasturi Dinesh Nagarjuna Chary Rajarikam Mohd Imran Ali |
| author_sort | Kovuri Umadevi |
| collection | DOAJ |
| container_title | Journal of Clinical and Diagnostic Research |
| description | Introduction: In the relentless global battle against the Coronavirus Disease-2019 (COVID-19) pandemic, accurate prediction of disease severity remains a critical challenge, with profound implications for patient outcomes and healthcare resource allocation. As the virus continues to evolve and pose new threats, the need for reliable prognostic indicators becomes increasingly urgent. Effective identification of patients at high-risk of developing severe illness not only facilitates timely intervention and personalised treatment strategies but also optimises healthcare resource utilisation. In this context, the exploration of novel biomarkers and predictive models holds immense promise for enhancing ones understanding of disease progression and improving clinical decision-making.
Aim: To study the association between haematological parameters, including Neutrophil-to-Lymphocyte Ratio (NLR), Lymphocyte-to-Monocyte Ratio (LMR), and Platelet-to-Lymphocyte Ratio (PLR), with Computed Tomography Scan Severity Score (CTSS) in COVID-19 patients.
Materials and Methods: A prospective cohort study was conducted from March 2021 to July 2022 at Government General Hospital (GGH) Nizamabad, Telangana, India. The study encompassed all three COVID-19 waves, included a sample size of 159 Reverse Transcriptase Polymerase Chain Reaction (RT-PCR) positive patients, excluding pregnant women and children under 10 years. Upon admission, CTSS and ratios of NLR, LMR, and PLR were recorded in an MS Excel sheet before any medical intervention and then analysed using Statistical Package for Social Sciences (SPSS) software 22.0.
Results: The study comprised 159 patients with a mean age of 50.86±13.89 years (ranging from 16 to 85), predominantly male 90 (56.61%). The highest infection rate 85 (53.45%) was in the 41-60 years age group. The NLR was significantly elevated from a mean value of 4.58 to 11.24 (r value=0.78, p-value=<0.001), and LMR notably reduced from 8.27 to 3.80 (r value=0.67, p-value=0.003) in correlation with the severity as indicated by CTSS. Although PLR values were higher in severe cases, increasing from 173.07 in mild cases to 272.29 in severe cases, there was no significant correlation with CTSS (r-value=-0.78, p-value=0.177).
Conclusion: CTSS emerges as a valuable radiological biomarker for predicting COVID-19 severity. However, due to its cost and limited availability in grassroots-level hospitals, there is a need for alternative severity prediction models. Present study proposes a predictive model using NLR and LMR biomarkers as alternatives to CTSS for assessing COVID-19 severity. |
| format | Article |
| id | doaj-art-7ff9bbf2669a4730a6284deea0ee1dc2 |
| institution | Directory of Open Access Journals |
| issn | 2249-782X 0973-709X |
| language | English |
| publishDate | 2024-05-01 |
| publisher | JCDR Research and Publications Private Limited |
| record_format | Article |
| spelling | doaj-art-7ff9bbf2669a4730a6284deea0ee1dc22025-08-20T00:19:07ZengJCDR Research and Publications Private LimitedJournal of Clinical and Diagnostic Research2249-782X0973-709X2024-05-011805121610.7860/JCDR/2024/69032.19433Assessing the Predictive Value of Haematological Parameters (NLR, LMR, PLR) for COVID-19 Disease Severity as quantified by CT Severity Scores: A Prospective Cohort StudyKovuri Umadevi0Lavanya Motrapu1Kasturi Dinesh2Nagarjuna Chary Rajarikam3Mohd Imran Ali4Senior Resident, Department of Pathology, Government Medical College Nizamabad, Telangana, India.Associate Professor, Department of Pathology, Government Medical College Nizamabad, Telangana, India.Assistant Professor, Department of Pathology, Government Medical College Nizamabad, Telangana, India.Professor and Head, Department of Pathology, Government Medical College Nizamabad, Telangana, India.Associate Professor, Department of Pathology, Government Medical College Nizamabad, Telangana, India.Introduction: In the relentless global battle against the Coronavirus Disease-2019 (COVID-19) pandemic, accurate prediction of disease severity remains a critical challenge, with profound implications for patient outcomes and healthcare resource allocation. As the virus continues to evolve and pose new threats, the need for reliable prognostic indicators becomes increasingly urgent. Effective identification of patients at high-risk of developing severe illness not only facilitates timely intervention and personalised treatment strategies but also optimises healthcare resource utilisation. In this context, the exploration of novel biomarkers and predictive models holds immense promise for enhancing ones understanding of disease progression and improving clinical decision-making. Aim: To study the association between haematological parameters, including Neutrophil-to-Lymphocyte Ratio (NLR), Lymphocyte-to-Monocyte Ratio (LMR), and Platelet-to-Lymphocyte Ratio (PLR), with Computed Tomography Scan Severity Score (CTSS) in COVID-19 patients. Materials and Methods: A prospective cohort study was conducted from March 2021 to July 2022 at Government General Hospital (GGH) Nizamabad, Telangana, India. The study encompassed all three COVID-19 waves, included a sample size of 159 Reverse Transcriptase Polymerase Chain Reaction (RT-PCR) positive patients, excluding pregnant women and children under 10 years. Upon admission, CTSS and ratios of NLR, LMR, and PLR were recorded in an MS Excel sheet before any medical intervention and then analysed using Statistical Package for Social Sciences (SPSS) software 22.0. Results: The study comprised 159 patients with a mean age of 50.86±13.89 years (ranging from 16 to 85), predominantly male 90 (56.61%). The highest infection rate 85 (53.45%) was in the 41-60 years age group. The NLR was significantly elevated from a mean value of 4.58 to 11.24 (r value=0.78, p-value=<0.001), and LMR notably reduced from 8.27 to 3.80 (r value=0.67, p-value=0.003) in correlation with the severity as indicated by CTSS. Although PLR values were higher in severe cases, increasing from 173.07 in mild cases to 272.29 in severe cases, there was no significant correlation with CTSS (r-value=-0.78, p-value=0.177). Conclusion: CTSS emerges as a valuable radiological biomarker for predicting COVID-19 severity. However, due to its cost and limited availability in grassroots-level hospitals, there is a need for alternative severity prediction models. Present study proposes a predictive model using NLR and LMR biomarkers as alternatives to CTSS for assessing COVID-19 severity.https://jcdr.net/articles/PDF/19433/69032_CE[Ra1]_F(IS)_QC_REF_PAT(AN_IS)_PF1(AG_DK)_PFA(OM)_PB(AG_OM)_PN(OM).pdfcoronavirus disease-2019lymphocyte-to-monocyte rationeutrophil-to-lymphocyte ratioplatelet-to-lymphocyte ratio |
| spellingShingle | Kovuri Umadevi Lavanya Motrapu Kasturi Dinesh Nagarjuna Chary Rajarikam Mohd Imran Ali Assessing the Predictive Value of Haematological Parameters (NLR, LMR, PLR) for COVID-19 Disease Severity as quantified by CT Severity Scores: A Prospective Cohort Study coronavirus disease-2019 lymphocyte-to-monocyte ratio neutrophil-to-lymphocyte ratio platelet-to-lymphocyte ratio |
| title | Assessing the Predictive Value of Haematological Parameters (NLR, LMR, PLR) for COVID-19 Disease Severity as quantified by CT Severity Scores: A Prospective Cohort Study |
| title_full | Assessing the Predictive Value of Haematological Parameters (NLR, LMR, PLR) for COVID-19 Disease Severity as quantified by CT Severity Scores: A Prospective Cohort Study |
| title_fullStr | Assessing the Predictive Value of Haematological Parameters (NLR, LMR, PLR) for COVID-19 Disease Severity as quantified by CT Severity Scores: A Prospective Cohort Study |
| title_full_unstemmed | Assessing the Predictive Value of Haematological Parameters (NLR, LMR, PLR) for COVID-19 Disease Severity as quantified by CT Severity Scores: A Prospective Cohort Study |
| title_short | Assessing the Predictive Value of Haematological Parameters (NLR, LMR, PLR) for COVID-19 Disease Severity as quantified by CT Severity Scores: A Prospective Cohort Study |
| title_sort | assessing the predictive value of haematological parameters nlr lmr plr for covid 19 disease severity as quantified by ct severity scores a prospective cohort study |
| topic | coronavirus disease-2019 lymphocyte-to-monocyte ratio neutrophil-to-lymphocyte ratio platelet-to-lymphocyte ratio |
| url | https://jcdr.net/articles/PDF/19433/69032_CE[Ra1]_F(IS)_QC_REF_PAT(AN_IS)_PF1(AG_DK)_PFA(OM)_PB(AG_OM)_PN(OM).pdf |
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