Web-Based Algorithms Applied to Low-Dose CTs Could Automate Detection of COVID-19
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By HospiMedica International staff writers Posted on 13 Nov 2020 |

Image: Scientists of the TUM are conducting laboratory and computer research on the classification and therapy of Covid-19 (Photo courtesy of TUM)
Scientists are using machine learning in the fight against the coronavirus pandemic by creating algorithms that could be used to ensure a more precise classification of COVID-19 in the future.
The Technical University of Munich (TUM Munich, Germany) is starting a new research project that will focus on using computer tomography (CT) and machine learning to classify the COVID-19 pulmonary disease which is a novel viral pulmonary inflammation. The aim of the project “The Early Detection and Classification of COVID-19 Pneumonia by Means of Computer Tomography and Machine Learning” is to apply machine learning methods to low-dose CTs of COVID-19 patients in order to perform individual, automated detection, quantification and risk evaluation of the disease.
With low-dose CT of the lungs, not only can infections be detected, but doctors can also see the extent to which the lungs are affected, something which they cannot do with a standard COVID-19 laboratory test. Low-dose CTs require only a small amount of radiation. At the end of the project, the TUM researchers hope to develop web-based algorithms that could be rolled out to and used in hospitals. The Bavarian Research Foundation (BFS) is funding the project which will also involve Siemens Healthineers AG.
Related Links:
Technical University of Munich
The Technical University of Munich (TUM Munich, Germany) is starting a new research project that will focus on using computer tomography (CT) and machine learning to classify the COVID-19 pulmonary disease which is a novel viral pulmonary inflammation. The aim of the project “The Early Detection and Classification of COVID-19 Pneumonia by Means of Computer Tomography and Machine Learning” is to apply machine learning methods to low-dose CTs of COVID-19 patients in order to perform individual, automated detection, quantification and risk evaluation of the disease.
With low-dose CT of the lungs, not only can infections be detected, but doctors can also see the extent to which the lungs are affected, something which they cannot do with a standard COVID-19 laboratory test. Low-dose CTs require only a small amount of radiation. At the end of the project, the TUM researchers hope to develop web-based algorithms that could be rolled out to and used in hospitals. The Bavarian Research Foundation (BFS) is funding the project which will also involve Siemens Healthineers AG.
Related Links:
Technical University of Munich
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