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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.

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