Multivariable Risk Modelling and Survival Analysis with Machine Learning in SARS-CoV-2 Infection

Author:

Ciarmiello Andrea1ORCID,Tutino Francesca1,Giovannini Elisabetta1ORCID,Milano Amalia2,Barattini Matteo3,Yosifov Nikola1,Calvi Debora4,Setti Maurizo5,Sivori Massimiliano6,Sani Cinzia7,Bastreri Andrea8,Staffiere Raffaele9,Stefanini Teseo3,Artioli Stefania4,Giovacchini Giampiero1

Affiliation:

1. Nuclear Medicine Unit, Ospedale Civile Sant’Andrea, Via Vittorio Veneto 170, 19124 La Spezia, Italy

2. Oncology Unit, Ospedale Civile Sant’Andrea, 19124 La Spezia, Italy

3. Radiology Unit, Ospedale Civile Sant’Andrea, 19124 La Spezia, Italy

4. Infectius Diseases Unit, Ospedale Civile Sant’Andrea, 19124 La Spezia, Italy

5. Internal Medicine Unit, Ospedale San Bartolomeo, 19138 Sarzana, Italy

6. Pneumology Unit, Ospedale Civile Sant’Andrea, 19124 La Spezia, Italy

7. Intensive Care Unit, Ospedale Civile Sant’Andrea, 19124 La Spezia, Italy

8. Emergency Department, Ospedale Civile Sant’Andrea, 19124 La Spezia, Italy

9. Emergency Department, Ospedale San Bartolomeo, 19138 Sarzana, Italy

Abstract

Aim: To evaluate the performance of a machine learning model based on demographic variables, blood tests, pre-existing comorbidities, and computed tomography(CT)-based radiomic features to predict critical outcome in patients with acute respiratory syndrome coronavirus 2 (SARS-CoV-2). Methods: We retrospectively enrolled 694 SARS-CoV-2-positive patients. Clinical and demographic data were extracted from clinical records. Radiomic data were extracted from CT. Patients were randomized to the training (80%, n = 556) or test (20%, n = 138) dataset. The training set was used to define the association between severity of disease and comorbidities, laboratory tests, demographic, and CT-based radiomic variables, and to implement a risk-prediction model. The model was evaluated using the C statistic and Brier scores. The test set was used to assess model prediction performance. Results: Patients who died (n = 157) were predominantly male (66%) over the age of 50 with median (range) C-reactive protein (CRP) = 5 [1, 37] mg/dL, lactate dehydrogenase (LDH) = 494 [141, 3631] U/I, and D-dimer = 6.006 [168, 152.015] ng/mL. Surviving patients (n = 537) had median (range) CRP = 3 [0, 27] mg/dL, LDH = 484 [78, 3.745] U/I, and D-dimer = 1.133 [96, 55.660] ng/mL. The strongest risk factors were D-dimer, age, and cardiovascular disease. The model implemented using the variables identified using the LASSO Cox regression analysis classified 90% of non-survivors as high-risk individuals in the testing dataset. In this sample, the estimated median survival in the high-risk group was 9 days (95% CI; 9–37), while the low-risk group did not reach the median survival of 50% (p < 0.001). Conclusions: A machine learning model based on combined data available on the first days of hospitalization (demographics, CT-radiomics, comorbidities, and blood biomarkers), can identify SARS-CoV-2 patients at risk of serious illness and death.

Publisher

MDPI AG

Subject

General Medicine

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