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1.
Flavio Azevedo Figueiredo; Lucas Emanuel Ferreira Ramos; Rafael Tavares Silva; Magda Carvalho Pires; Daniela Ponce; Rafael Lima Rodrigues de Carvalho; Alexandre Vargas Schwarzbold; Amanda de Oliveira Maurilio; Ana Luiza Bahia Alves Scotton; Andresa Fontoura Garbini; Barbara Lopes Farace; Barbara Machado Garcia; Carla Thais Candida Alves Silva; Christiane Correa Rodrigues Cimini Cimini; Cintia Alcantara de Carvalho; Cristiane dos Santos Dias; Daniel Vitorio Silveira; Euler Roberto Fernandes Manenti; Evelin Paola de Almeida Cenci; Fernando Anschau; Fernando Graca Aranha; Filipe Carrilho de Aguiar; Frederico Bartolazzi; Giovanna Grunewald Vietta; Guilherme Fagundes Nascimento; Helena Carolina Noal; Helena Duani; Heloisa Reniers Vianna; Henrique Cerqueira Guimaraes; Joice Coutinho de Alvarenga; Jose Miguel Chatkin; Julia Parreiras Drumond de Moraes; Juliana Machado Rugolo; Karen Brasil Ruschel; Karina Paula Medeiros Prado Martins; Luanna Silva Monteiro Menezes; Luciana Siuves Ferreira Couto; Luis Cesar de Castro; Luiz Antonio Nasi; Maderson Alvares de Souza Cabral; Maiara Anschau Floriani; Maira Dias Souza; Maira Viana Rego Souza e Silva; Marcelo Carneiro; Mariana Frizzo de Godoy; Maria Aparecida Camargos Bicalho; Maria Clara Pontello Barbosa Lima; Matheus Carvalho Alves Nogueira; Matheus Fernandes Lopes Martins; Milton Henriques Guimaraes-Junior; Natalia da Cunha Severino Sampaio; Neimy Ramos de Oliveira; Patricia Klarmann Ziegelmann; Pedro Guido Soares Andrade; Pedro Ledic Assaf; Petronio Jose de Lima Martelli; POLIANNA DELFINO PEREIRA; Raphael Castro Martins; Rochele Mosmann Menezes; Saionara Cristina Francisco; Silvia Ferreira Araujo; Talita Fischer Oliveira; Thainara Conceicao de Oliveira; Thais Lorenna Souza Sales; Yuri Carlotto Ramires; Milena Soriano Marcolino.
Preprint en Inglés | medRxiv | ID: ppmedrxiv-22268631

RESUMEN

BackgroundAcute kidney injury (AKI) is frequently associated with COVID-19 and the need for kidney replacement therapy (KRT) is considered an indicator of disease severity. This study aimed to develop a prognostic score for predicting the need for KRT in hospitalized COVID-19 patients. MethodsThis study is part of the multicentre cohort, the Brazilian COVID-19 Registry. A total of 5,212 adult COVID-19 patients were included between March/2020 and September/2020. We evaluated four categories of predictor variables: (1) demographic data; (2) comorbidities and conditions at admission; (3) laboratory exams within 24 h; and (4) the need for mechanical ventilation at any time during hospitalization. Variable selection was performed using generalized additive models (GAM) and least absolute shrinkage and selection operator (LASSO) regression was used for score derivation. The accuracy was assessed using the area under the receiver operating characteristic curve (AUC-ROC). Risk groups were proposed based on predicted probabilities: non-high (up to 14.9%), high (15.0 - 49.9%), and very high risk ([≥] 50.0%). ResultsThe median age of the model-derivation cohort was 59 (IQR 47-70) years, 54.5% were men, 34.3% required ICU admission, 20.9% evolved with AKI, 9.3% required KRT, and 15.1% died during hospitalization. The validation cohort had similar age, sex, ICU admission, AKI, required KRT distribution and in-hospital mortality. Thirty-two variables were tested and four important predictors of the need for KRT during hospitalization were identified using GAM: need for mechanical ventilation, male gender, higher creatinine at admission, and diabetes. The MMCD score had excellent discrimination in derivation (AUROC = 0.929; 95% CI 0.918-0.939) and validation (AUROC = 0.927; 95% CI 0.911-0.941) cohorts an good overall performance in both cohorts (Brier score: 0.057 and 0.056, respectively). The score is implemented in a freely available online risk calculator (https://www.mmcdscore.com/). ConclusionThe use of the MMCD score to predict the need for KRT may assist healthcare workers in identifying hospitalized COVID-19 patients who may require more intensive monitoring, and can be useful for resource allocation.

2.
Daniella Nunes Pereira; Leticia Ferreira Gontijo Silveira; Milena Maria Moreira Guimaraes; Carisi Anne Polanczyk; Aline Gabrielle Sousa Nunes; Andre Soares de Moura Costa; Barbara Lopes Farace; Christiane Correa Rodrigues Cimini; Cintia Alcantara de Carvalho; Daniela Ponce; Eliane Wurdig Roesch; Euler Roberto Fernandes Manenti; Fernanda Barbosa Lucas; Fernanda d'Athayde Rodrigues; Fernando Anschau; Fernando Graca Aranha; Frederico Bartolazzi; Giovanna Grunewald Vietta; Guilherme Fagundes Nascimento; Helena Duani; Heloisa Reniers Vianna; Henrique Cerqueira Guimaraes; Jamille Hemetrio Salles Martins Costa; Joanna d'Arc Lyra Batista; Joice Coutinho de Alvarenga; Jose Miguel Chatkin; Julia Drumond Parreiras de Morais; Juliana Machado-Rugolo; Karen Brasil Ruschel; Lilian Santos Pinheiro; Luanna Silva Monteiro Menezes; Luciana Siuves Ferreira Couto; Luciane Kopittke; Luis Cesar de Castro; Luiz Antonio Nasi; Maderson Alvares de Souza Cabral; Maiara Anschau Floriani; Maira Dias Souza; Marcelo Carneiro; Maria Aparecida Camargos Bicalho; Mariana Frizzo de Godoy; Matheus Carvalho Alves Nogueira; Milton Henriques Guimaraes Junior; Natalia da Cunha Severino Sampaio; Neimy Ramos de Oliveira; Pedro Ledic Assaf; Renan Goulart Finger; Roberta Xavier Campos; Rochele Mosmann Menezes; Saionara Cristina Francisco; Samuel Penchel Alvarenga; Silvana Mangeon Mereilles Guimaraes; Silvia Ferreira Araujo; Talita Fischer Oliveira; Thulio Henrique Oliveira Diniz; Yuri Carlotto Ramires; Evelin Paola de Almeida Cenci; Thainara Conceicao de Oliveira; Alexandre Vargas Schwarzbold; Patricia Klarmann Ziegelmann; Roberta Pozza; Magda Carvalho Pires; Milena Soriano Marcolino.
Preprint en Inglés | medRxiv | ID: ppmedrxiv-21265685

RESUMEN

BackgroundIt is not clear whether previous thyroid diseases influence the course and outcomes of COVID-19. The study aims to compare clinical characteristics and outcomes of COVID-19 patients with and without hypothyroidism. MethodsThe study is a part of a multicentric cohort of patients with confirmed COVID-19 diagnosis, including data collected from 37 hospitals. Matching for age, sex, number of comorbidities and hospital was performed to select the patients without hypothyroidism for the paired analysis. ResultsFrom 7,762 COVID-19 patients, 526 had previously diagnosed hypothyroidism (50%) and 526 were selected as matched controls. The median age was 70 (interquartile range 59.0-80.0) years-old and 68.3% were females. The prevalence of underlying comorbidities were similar between groups, except for coronary and chronic kidney diseases, that had a higher prevalence in the hypothyroidism group (9.7% vs. 5.7%, p=0.015 and 9.9% vs. 4.8%, p=0.001, respectively). At hospital presentation, patients with hypothyroidism had a lower frequency of respiratory rate > 24 breaths per minute (36.1% vs 42.0%; p=0.050) and need of mechanical ventilation (4.0% vs 7.4%; p=0.016). D-dimer levels were slightly lower in hypothyroid patients (2.3 times higher than the reference value vs 2.9 times higher; p=0.037). In-hospital management was similar between groups, but hospital length-of-stay (8 vs 9 days; p=0.029) and mechanical ventilation requirement (25.4% vs. 33.1%; p=0.006) were lower for patients with hypothyroidism. There was a trend of lower in-hospital mortality in patients with hypothyroidism (22.1% vs. 27.0%; p=0.062). ConclusionIn this large Brazilian COVID-19 Registry, patients with hypothyroidism had a lower requirement of mechanical ventilation, and showed a trend of lower in-hospital mortality. Therefore, hypothyroidism does not seem to be associated with a worse prognosis, and should not be considered among the comorbidities that indicate a risk factor for COVID-19 severity.

3.
Bruno Barbosa Miranda de Paiva Sr.; Polianna Delfino Pereira Sr.; Claudio Moises Valiense de Andrade; Virginia Mara Reis Gomes Sr.; Maria Clara Pontello Barbosa Lima Sr.; Maira Viana Rego Souza Silva Sr.; Marcelo Carneiro Sr.; Karina Paula Medeiros Prado Martins Sr.; Thais Lorenna Souza Sales Sr.; Rafael Lima Rodrigues de Carvalho Sr.; Magda C. Pires; Lucas Emanuel F Ramos; Rafael T Silva Sr.; Adriana Falangola Benjamin Bezerra; Alexandre Vargas Schwarzbold; Aline Gabrielle Sousa Nunes; Amanda de Oliveira Maurilio; Ana Luiza Bahia Alves Scotton; Andre Soares de Moura Costa; Andriele Abreu Castro; Barbara Lopes Farace; Christiane Correa Rodrigues Cimini; Cintia Alcantara De Carvalho; Daniel Vitorio Silveira; Daniela Ponce; Elayne Crestani Pereira; Euler Roberto Fernandes Manenti; Evelin Paola de Almeida Cenci; Fernanda Barbosa Lucas; Fernanda D'Athayde Rodrigues; Fernando Anschau; Fernando Antonio Botoni; Fernando Graca Aranha; Frederico Bartolazzi; Gisele Alsina Nader Bastos; Giovanna Grunewald Vietta; Guilherme Fagundes Nascimento; Helena Carolina Noal; Helena Duani; Heloisa Reniers Vianna; Henrique Cerqueira Guimaraes; Isabela Moraes Gomes; Jamille Hemetrio Salles Martins Costa; Jessica Rayane Correa Silva da Fonseca; Julia Di Sabatino Santos Guimaraes; Julia Drumond Parreiras de Morais; Juliana Machado Rugolo; Joanna D'arc Lyra Batista; Joice Coutinho de Alvarenga; Jose Miguel Chatkin; Karen Brasil Ruschel; Leila Beltrami Moreira; Leonardo Seixas de Oliveira; Liege Barella Zandona; Lilian Santos Pinheiro; Luanna da Silva Monteiro; Lucas de Deus Sousa; Luciane Kopittke; Luciano de Souza Viana; Luis Cesar de Castro; Luisa Argolo Assis; Luisa Elem Almeida Santos; Maderson Alvares de Souza Cabral; Magda Cesar Raposo; Maiara Anschau Floriani; Maria Angelica Pires Ferreira; Maria Aparecida Camargos Bicalho; Mariana Frizzo de Godoy; Matheus Carvalho Alves Nogueira; Meire Pereira de Figueiredo; Milton Henriques Guimaraes Junior; Monica Aparecida de Paula De Sordi; Natalia da Cunha Severino Sampaio; Neimy Ramos de Oliveira; Pedro Ledic Assaf; Raquel Lutkmeier; Reginaldo Aparecido Valacio; Renan Goulart Finger; Roberta Senger; Rochele Mosmann Menezes; Rufino de Freitas Silva; Saionara Cristina Francisco; Silvana Mangeon Mereilles Guimaraes; Silvia Ferreira Araujo; Talita Fischer Oliveira; Tatiana Kurtz; Tatiani Oliveira Fereguetti; Thainara Conceicao de Oliveira; Thulio Henrique Oliveira Diniz; Yara Neves Marques Barbosa Ribeiro; Yuri Carlotto Ramires; Marcos Andre Goncalves; Milena Soriano Marcolino.
Preprint en Inglés | medRxiv | ID: ppmedrxiv-21265527

RESUMEN

ObjectiveTo provide a thorough comparative study among state-of-the-art machine learning methods and statistical methods for determining in-hospital mortality in COVID-19 patients using data upon hospital admission; to study the reliability of the predictions of the most effective methods by correlating the probability of the outcome and the accuracy of the methods; to investigate how explainable are the predictions produced by the most effective methods. Materials and MethodsDe-identified data were obtained from COVID-19 positive patients in 36 participating hospitals, from March 1 to September 30, 2020. Demographic, comorbidity, clinical presentation and laboratory data were used as training data to develop COVID-19 mortality prediction models. Multiple machine learning and traditional statistics models were trained on this prediction task using a folded cross-validation procedure, from which we assessed performance and interpretability metrics. ResultsThe Stacking of machine learning models improved over the previous state-of-the-art results by more than 26% in predicting the class of interest (death), achieving 87.1% of AUROC and macro F1 of 73.9%. We also show that some machine learning models can be very interpretable and reliable, yielding more accurate predictions while providing a good explanation for the why. ConclusionThe best results were obtained using the meta-learning ensemble model - Stacking. State-of the art explainability techniques such as SHAP-values can be used to draw useful insights into the patterns learned by machine-learning algorithms. Machine-learning models can be more explainable than traditional statistics models while also yielding highly reliable predictions.

4.
Milena Soriano Marcolino; Magda Carvalho Pires; Lucas Emanuel Ferreira Ramos; Rafael Tavares Silva; Luana Martins Oliveira; Rafael Lima Rodrigues de Carvalho; Rodolfo Lucas Silva Mourato; Adrian Sanchez Montalva; Berta Raventos; Fernando Anschau; Jose Miguel Chatkin; Matheus Carvalho Alves Nogueira; Milton Henriques Guimaraes Junior; Giovanna Grunewald Vietta; Helena Duani; Daniela Ponce; Patricia Klarmann Ziegelmann; Luis Cesar de Castro; Karen Brasil Ruschel; Christiane Correa Rodrigues Cimini; Saionara Cristina Francisco; Maiara Anschau Floriani; Guilherme Fagundes Nascimento; Barbara Lopes Farace; Luanna da Silva Monteiro; Maira Viana Rego Souza e Silva; Thais Lorenna Souza Sales; Karina Paula Medeiros Prado Martins; Israel Junior Borges do Nascimento; Tatiani Oliveira Fereguetti; Daniel Taiar Marinho Oliveira Ferrara; Fernando Antonio Botoni; Ana Paula Beck da Silva Etges; Eric Boersma; Carisi Anne Polanczyk; Alexandre Vargas Schwarbold; Amanda Oliveira Maurilio; Ana Luiza Bahia Alves Scotton; Andre Pinheiro Weber; Andre Soares de Moura Costa; Andressa Barreto Glaeser; Angelica Aparecida Coelho Madureira; Angelinda Rezende Bhering; Bruno Mateus Castro; Carla Thais Candida Alves da Silva; Carolina Marques Ramos; Caroline Danubia Gomes; Cintia Alcantara de Carvalho; Daniel Vitorio Silveira; Diego Henrique de Vasconcelos; Edilson Cezar; Elayne Crestani Pereira; Emanuele Marianne Souza Kroger; Felipe Barbosa Vallt; Fernanda Barbosa Lucas; Fernando Graca Aranha; Frederico Bartolazzi; Gabriela Petry Crestani; Gisele Alsina Nader Bastos; Glicia Cristina de Castro Madeira; Helena Carolina Noal; Heloisa Reniers Vianna; Henrique Cerqueira Guimaraes; Isabela Moraes Gomes; Israel Molina Romero; Joanna dArc Lyra Batista; Joice Coutinho de Alvarenga; Julia Di Sabatino Santos Guimaraes; Julia Drumond Parreiras de Morais; Juliana Machado Rugolo; Karen Cristina Jung Rech Pontes; Kauane Aline Maciel dos Santos; Leonardo Seixas de Oliveira; Lilian Santos Pinheiro; Liliane Souto Pacheco; Lucas de Deus Sousa; Luciana Siuves Ferreira Couto; Luciane Kopittke; Luis Cesar Souto de Moura; Luisa Elem Almeida Santos; Maderson Alvares de Souza Cabral; Maira Dias Souza; Marcela Goncalves Trindade Tofani; Marcelo Carneiro; Marcus Vinicius de Melo Andrade; Maria Angelica Pires Ferreira; Maria Aparecida Camargos Bicalho; Maria Clara Pontello Barbosa Lima; Mariana Frizzo de Godoy; Marilia Mastrocolla de Almeida Cardoso; Meire Pereira de Figueiredo; Natalia da Cunha Severino Sampaio; Natalia Lima Rangel; Natalia Trifiletti Crespo; Neimy Ramos de Oliveira; Pedro Ledic Assaf; Petronio Jose de Lima Martelli; Rafaela dos Santos Charao de Almeida; Raphael Castro Martins; Raquel Lutkmeier; Reginaldo Aparecido Valacio; Renan Goulart Finger; Ricardo Bertoglio Cardoso; Roberta Pozza; Roberta Xavier Campos; Rochele Mosmann Menezes; Roger Mendes de Abreu; Rufino de Freitas Silva; Silvana Mangeon Mereilles Guimaraes; Silvia Ferreira Araujo; Susany Anastacia Pereira; Talita Fischer Oliveira; Tatiana Kurtz; Thainara Conceicao de Oliveira; Thaiza Simonia Marinho Albino de Araujo; Thulio Henrique Oliveira Diniz; Veridiana Baldon dos Santos Santos; Virginia Mara Reis Gomes; Vitor Augusto Lima do Vale; Yuri Carlotto Ramires.
Preprint en Inglés | medRxiv | ID: ppmedrxiv-21250306

RESUMEN

ObjectiveTo develop and validate a rapid scoring system at hospital admission for predicting in-hospital mortality in patients hospitalized with coronavirus disease 19 (COVID-19), and to compare this score with other existing ones. DesignCohort study SettingThe Brazilian COVID-19 Registry has been conducted in 36 Brazilian hospitals in 17 cities. Logistic regression analysis was performed to develop a prediction model for in-hospital mortality, based on the 3978 patients that were admitted between March-July, 2020. The model was then validated in the 1054 patients admitted during August-September, as well as in an external cohort of 474 Spanish patients. ParticipantsConsecutive symptomatic patients ([≥]18 years old) with laboratory confirmed COVID-19 admitted to participating hospitals. Patients who were transferred between hospitals and in whom admission data from the first hospital or the last hospital were not available were excluded, as well those who were admitted for other reasons and developed COVID-19 symptoms during their stay. Main outcome measuresIn-hospital mortality ResultsMedian (25th-75th percentile) age of the model-derivation cohort was 60 (48-72) years, 53.8% were men, in-hospital mortality was 20.3%. The validation cohorts had similar age distribution and in-hospital mortality. From 20 potential predictors, seven significant variables were included in the in-hospital mortality risk score: age, blood urea nitrogen, number of comorbidities, C-reactive protein, SpO2/FiO2 ratio, platelet count and heart rate. The model had high discriminatory value (AUROC 0.844, 95% CI 0.829 to 0.859), which was confirmed in the Brazilian (0.859) and Spanish (0.899) validation cohorts. Our ABC2-SPH score showed good calibration in both Brazilian cohorts, but, in the Spanish cohort, mortality was somewhat underestimated in patients with very high (>25%) risk. The ABC2-SPH score is implemented in a freely available online risk calculator (https://abc2sph.com/). ConclusionsWe designed and validated an easy-to-use rapid scoring system based on characteristics of COVID-19 patients commonly available at hospital presentation, for early stratification for in-hospital mortality risk of patients with COVID-19. Summary boxesWhat is already known on this topic? O_LIRapid scoring systems may be very useful for fast and effective assessment of COVID-19 patients in the emergency department. C_LIO_LIThe majority of available scores have high risk of bias and lack benefit to clinical decision making. C_LIO_LIDerivation and validation studies in low- and middle-income countries, including Latin America, are scarce. C_LI What this study adds O_LIABC2-SPH employs seven well defined variables, routinely assessed upon hospital presentation: age, number of comorbidities, blood urea nitrogen, C reactive protein, Spo2/FiO2 ratio, platelets and heart rate. C_LIO_LIThis easy-to-use risk score identified four categories at increasing risk of death with a high level of accuracy, and displayed better discrimination ability than other existing scores. C_LIO_LIA free web-based calculator is available and may help healthcare practitioners to estimate the expected risk of mortality for patients at hospital presentation. C_LI

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