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Robust prediction of mortality of COVID-19 patients based on quantitative, operator-independent, lung CT densitometry

Articolo
Data di Pubblicazione:
2021
Abstract:
Purpose: To train and validate a predictive model of mortality for hospitalized COVID-19 patients based on lung densitometry. Methods: Two-hundred-fifty-one patients with respiratory symptoms underwent CT few days after hospitalization. “Aerated” (AV), “consolidated” (CV) and “intermediate” (IV) lung sub-volumes were quantified by an operator-independent method based on individual HU maximum gradient recognition. AV, CV, IV, CV/AV, IV/AV, and HU of the first peak position were extracted. Relevant clinical parameters were prospectively collected. The population was composed by training (n = 166) and validation (n = 85) consecutive cohorts, and backward multi-variate logistic regression was applied on the training group to build a CT_model. Similarly, models including only clinical parameters (CLIN_model) and both CT/clinical parameters (COMB_model) were developed. Model's performances were assessed by goodness-of-fit (H&L-test), calibration and discrimination. Model's performances were tested in the validation group. Results: Forty-three patients died (25/18 in training/validation). CT_model included AVmax (i.e. maximum AV between lungs), CV and CV/AE, while CLIN_model included random glycemia, C-reactive protein and biological drugs (protective). Goodness-of-fit and discrimination were similar (H&L:0.70 vs 0.80; AUC:0.80 vs 0.80). COMB_model including AVmax, CV, CV/AE, random glycemia, biological drugs and active cancer, outperformed both models (H&L:0.91; AUC:0.89, 95%CI:0.82–0.93). All models showed good calibration (R2:0.77–0.97). Despite several patient's characteristics were different between training and validation cohorts, performances in the validation cohort confirmed good calibration (R2:0–70-0.81) and discrimination for CT_model/COMB_model (AUC:0.72/0.76), while CLIN_model performed worse (AUC:0.64). Conclusions: Few automatically extracted densitometry parameters with clear functional meaning predicted mortality of COVID-19 patients. Combined with clinical features, the resulting predictive model showed higher discrimination/calibration.
Tipologia CRIS:
1.1 Articolo in rivista
Keywords:
COVID-19; CT; Lung densitometry; Respiratory distress syndrome; Densitometry; Humans; Lung; Retrospective Studies; SARS-CoV-2; Tomography, X-Ray Computed; COVID-19
Elenco autori:
Mori, M.; Palumbo, D.; De Lorenzo, R.; Broggi, S.; Compagnone, N.; Guazzarotti, G.; Giorgio Esposito, P.; Mazzilli, A.; Steidler, S.; Pietro Vitali, G.; Del Vecchio, A.; Rovere Querini, P.; De Cobelli, F.; Fiorino, C.
Autori di Ateneo:
DE COBELLI FRANCESCO
PALUMBO DIEGO
ROVERE QUERINI PATRIZIA
Link alla scheda completa:
https://iris.unisr.it/handle/20.500.11768/120034
Pubblicato in:
PHYSICA MEDICA
Journal
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