Abstract
Telehealth services for long-term monitoring of chronically ill patients
are becoming more and more common, leading to huge amounts of data collected
by patients and healthcare professionals each day. While most of these data are
structured, some information, especially concerning the communication between the
stakeholders, is typically stored as unstructured free-texts. This paper outlines the
differences in analyzing free-texts from the heart failure telehealth network
HerzMobil as compared to the diabetes telehealth network DiabMemory. A total of
3,739 free-text notes from HerzMobil and 228,109 notes from DiabMemory, both
written in German, were analyzed. A pre-existing, regular expression based
algorithm developed for heart failure free-texts was adapted to cover also the
diabetes scenario. The resulting algorithm was validated with a subset of 200 notes
that were annotated by three scientists, achieving an accuracy of 92.62%. When
applying the algorithm to heart failure and diabetes texts, we found various
similarities but also several differences concerning the content. As a consequence,
specific requirements for the algorithm were identified.
Original language | English |
---|---|
Title of host publication | Studies in Health Technology and Informatics - Volume 279: Navigating Healthcare Through Challenging Times |
Publisher | IOS Press |
Pages | 157-164 |
Number of pages | 8 |
ISBN (Print) | 978-1-64368-180-1 |
DOIs | |
Publication status | Published - 2021 |
Event | dHealth 2021 - Health Informatics meets digital health - Duration: 11 May 2021 → 12 May 2021 |
Conference
Conference | dHealth 2021 - Health Informatics meets digital health |
---|---|
Period | 11/05/21 → 12/05/21 |
Research Field
- Exploration of Digital Health
Keywords
- Heart failure
- diabetes
- natural language processing
- telehealth