| Literature DB >> 33631297 |
Albrecht Stenzinger1, Maximilian Alber2, Michael Allgäuer3, Philipp Jurmeister4, Michael Bockmayr5, Jan Budczies6, Jochen Lennerz7, Johannes Eschrich8, Daniel Kazdal9, Peter Schirmacher6, Alex H Wagner10, Frank Tacke8, David Capper11, Klaus-Robert Müller12, Frederick Klauschen13.
Abstract
The complexity of diagnostic (surgical) pathology has increased substantially over the last decades with respect to histomorphological and molecular profiling. Pathology has steadily expanded its role in tumor diagnostics and beyond from disease entity identification via prognosis estimation to precision therapy prediction. It is therefore not surprising that pathology is among the disciplines in medicine with high expectations in the application of artificial intelligence (AI) or machine learning approaches given their capabilities to analyze complex data in a quantitative and standardized manner to further enhance scope and precision of diagnostics. While an obvious application is the analysis of histological images, recent applications for the analysis of molecular profiling data from different sources and clinical data support the notion that AI will enhance both histopathology and molecular pathology in the future. At the same time, current literature should not be misunderstood in a way that pathologists will likely be replaced by AI applications in the foreseeable future. Although AI will transform pathology in the coming years, recent studies reporting AI algorithms to diagnose cancer or predict certain molecular properties deal with relatively simple diagnostic problems that fall short of the diagnostic complexity pathologists face in clinical routine. Here, we review the pertinent literature of AI methods and their applications to pathology, and put the current achievements and what can be expected in the future in the context of the requirements for research and routine diagnostics.Entities:
Keywords: Artificial intelligence; Image analysis; Machine learning; Molecular pathology; Pathology
Mesh:
Year: 2021 PMID: 33631297 DOI: 10.1016/j.semcancer.2021.02.011
Source DB: PubMed Journal: Semin Cancer Biol ISSN: 1044-579X Impact factor: 17.012