Decisional algorithm in the differential diagnosis of lung outcomes from COVID-19.

s. vernocchi (Abbiategrasso, Italy), T. Serini (Chiasso, Switzerland), A. Aceranti (Milano, Italy), O. Grassi (Cuggiono, Italy), L. Tomaello (Abbiategrasso, Italy), E. Pagliaro (Milano, Italy), N. Mumoli (Magenta, Italy)

Source: Virtual Congress 2021 – Interstitial lung disease, COVID-19 and friends
Session: Interstitial lung disease, COVID-19 and friends
Session type: E-poster
Number: 2532

Congress or journal article abstractE-poster

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s. vernocchi (Abbiategrasso, Italy), T. Serini (Chiasso, Switzerland), A. Aceranti (Milano, Italy), O. Grassi (Cuggiono, Italy), L. Tomaello (Abbiategrasso, Italy), E. Pagliaro (Milano, Italy), N. Mumoli (Magenta, Italy). Decisional algorithm in the differential diagnosis of lung outcomes from COVID-19.. 2532

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