(2020-1.1.2-PIACI-KFI-2021-00298) Támogató: Nemzeti Kutatás, Fejlesztés és Innovációs
Iroda
NRDI Office of Hungary within the framework of the Artificial Intelligence National
Laboratory Pr...(RRF-2.3.1-21-2022-00004)
(RRF-2.3.1-21-2022-00006) Támogató: Egészségbiztonság Nemzeti Laboratórium
(K128780) Támogató: Nemzeti Kutatás, Fejlesztés és Innovációs Iroda
Mesterséges Intelligencia Nemzeti Laboratórium / Artificial Intelligence National
Laboratory(MILAB) Támogató: NKFIH
(Open access funding provided by Semmelweis University)
In the past few years COVID-19 posed a huge threat to healthcare systems around the
world. One of the first waves of the pandemic hit Northern Italy severely resulting
in high casualties and in the near breakdown of primary care. Due to these facts,
the Covid CXR Hackathon—Artificial Intelligence for Covid-19 prognosis: aiming at
accuracy and explainability challenge had been launched at the beginning of February
2022, releasing a new imaging dataset with additional clinical metadata for each accompanying
chest X-ray (CXR). In this article we summarize our techniques at correctly diagnosing
chest X-ray images collected upon admission for severity of COVID-19 outcome. In addition
to X-ray imagery, clinical metadata was provided and the challenge also aimed at creating
an explainable model. We created a best-performing, as well as, an explainable model
that makes an effort to map clinical metadata to image features whilst predicting
the prognosis. We also did many ablation studies in order to identify crucial parts
of the models and the predictive power of each feature in the datasets. We conclude
that CXRs at admission do not help the predicting power of the metadata significantly
by itself and contain mostly information that is also mutually present in the blood
samples and other clinical factors collected at admission.