Michael Mikhailov


2020

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From Witch’s Shot to Music Making Bones - Resources for Medical Laymen to Technical Language and Vice Versa
Laura Seiffe | Oliver Marten | Michael Mikhailov | Sven Schmeier | Sebastian Möller | Roland Roller
Proceedings of the Twelfth Language Resources and Evaluation Conference

Many people share information in social media or forums, like food they eat, sports activities they do or events which have been visited. Information we share online unveil directly or indirectly information about our lifestyle and health situation. Particularly when text input is getting longer or multiple messages can be linked to each other. Those information can be then used to detect possible risk factors of diseases or adverse drug reactions of medications. However, as most people are not medical experts, language used might be more descriptive rather than the precise medical expression as medics do. To detect and use those relevant information, laymen language has to be translated and/or linked against the corresponding medical concept. This work presents baseline data sources in order to address this challenge for German language. We introduce a new dataset which annotates medical laymen and technical expressions in a patient forum, along with a set of medical synonyms and definitions, and present first baseline results on the data.

2019

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Exploring Diachronic Changes of Biomedical Knowledge using Distributed Concept Representations
Gaurav Vashisth | Jan-Niklas Voigt-Antons | Michael Mikhailov | Roland Roller
Proceedings of the 18th BioNLP Workshop and Shared Task

In research best practices can change over time as new discoveries are made and novel methods are implemented. Scientific publications reporting about the latest facts and current state-of-the-art can be possibly outdated after some years or even proved to be false. A publication usually sheds light only on the knowledge of the period it has been published. Thus, the aspect of time can play an essential role in the reliability of the presented information. In Natural Language Processing many methods focus on information extraction from text, such as detecting entities and their relationship to each other. Those methods mostly focus on the facts presented in the text itself and not on the aspects of knowledge which changes over time. This work instead examines the evolution in biomedical knowledge over time using scientific literature in terms of diachronic change. Mainly the usage of temporal and distributional concept representations are explored and evaluated by a proof-of-concept.

2016

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A fine-grained corpus annotation schema of German nephrology records
Roland Roller | Hans Uszkoreit | Feiyu Xu | Laura Seiffe | Michael Mikhailov | Oliver Staeck | Klemens Budde | Fabian Halleck | Danilo Schmidt
Proceedings of the Clinical Natural Language Processing Workshop (ClinicalNLP)

In this work we present a fine-grained annotation schema to detect named entities in German clinical data of chronically ill patients with kidney diseases. The annotation schema is driven by the needs of our clinical partners and the linguistic aspects of German language. In order to generate annotations within a short period, the work also presents a semi-automatic annotation which uses additional sources of knowledge such as UMLS, to pre-annotate concepts in advance. The presented schema will be used to apply novel techniques from natural language processing and machine learning to support doctors treating their patients by improved information access from unstructured German texts.