[Artificial intelligence and machine learning in auscultation: prospects of the project DigitaLung].
Luca Hilberink, Pia Wehage, Milad Pashai Fakhri, Svenja Gaedcke, David DeLuca, Patricia Mattis, Jessica Rademacher
Author Information
Luca Hilberink: Respiratory Medicine and Infectious Diseases, Hannover Medical School, Hannover, Deutschland.
Pia Wehage: Respiratory Medicine and Infectious Diseases, Hannover Medical School, Hannover, Deutschland.
Milad Pashai Fakhri: Respiratory Medicine and Infectious Diseases, Hannover Medical School, Hannover, Deutschland.
Svenja Gaedcke: Biomedical Research in Endstage and Obstructive Lung Disease Hannover (BREATH), German Center for Lung Research (DZL), Hannover Medical School, Hannover, Deutschland.
David DeLuca: Biomedical Research in Endstage and Obstructive Lung Disease Hannover (BREATH), German Center for Lung Research (DZL), Hannover Medical School, Hannover, Deutschland.
Patricia Mattis: Business Development Manager, Translational Biomedical Engineering, Fraunhofer Institute for Toxicology and Experimental Medicine ITEM, Hannover, Deutschland.
Jessica Rademacher: Respiratory Medicine and Infectious Diseases, Hannover Medical School, Hannover, Deutschland.
Auscultation is one of the key medical skills in physical examination. The main problem with auscultation is the lack of objectivity of the findings and great dependence on the experience of the examiner. Auscultation using machine learning and neural networks promises great potential for solving these problems in clinical practice.A selective search for studies in PubMed was carried out, which revealed the possibilities of machine learning in medical diagnostics.In all the studies identified, significant differences were shown between the respective test groups in favour of artificial intelligence (AI). In addition to the positive study results, the limitations of AI could also be analysed and critically scrutinised.Medical research in the field of artificial intelligence is still in its infancy. The prospects and limitations of AI must be further investigated and require close attention in the collaboration between clinicians, scientists and AI experts. Publicly funded projects such as DigitaLung (a digital auscultation system for the differential diagnosis of lung diseases using machine learning), which aims to improve lung auscultation using AI, will help to unlock the diagnostic benefits of AI for patient care and could improve care in the future.
Grants
13GW0554C/Bundesministerium f��r Bildung und Forschung