| Literature DB >> 31304337 |
Enrico Coiera1, Baki Kocaballi1, John Halamka2, Liliana Laranjo1.
Abstract
Current generation electronic health records suffer a number of problems that make them inefficient and associated with poor clinical satisfaction. Digital scribes or intelligent documentation support systems, take advantage of advances in speech recognition, natural language processing and artificial intelligence, to automate the clinical documentation task currently conducted by humans. Whilst in their infancy, digital scribes are likely to evolve through three broad stages. Human led systems task clinicians with creating documentation, but provide tools to make the task simpler and more effective, for example with dictation support, semantic checking and templates. Mixed-initiative systems are delegated part of the documentation task, converting the conversations in a clinical encounter into summaries suitable for the electronic record. Computer-led systems are delegated full control of documentation and only request human interaction when exceptions are encountered. Intelligent clinical environments permit such augmented clinical encounters to occur in a fully digitised space where the environment becomes the computer. Data from clinical instruments can be automatically transmitted, interpreted using AI and entered directly into the record. Digital scribes raise many issues for clinical practice, including new patient safety risks. Automation bias may see clinicians automatically accept scribe documents without checking. The electronic record also shifts from a human created summary of events to potentially a full audio, video and sensor record of the clinical encounter. Digital scribes promisingly offer a gateway into the clinical workflow for more advanced support for diagnostic, prognostic and therapeutic tasks.Entities:
Keywords: Health services; Translational research
Year: 2018 PMID: 31304337 PMCID: PMC6550194 DOI: 10.1038/s41746-018-0066-9
Source DB: PubMed Journal: NPJ Digit Med ISSN: 2398-6352
Fig. 1Clinical documentation systems can be strictly passive, where humans are tasked with data entry, through increasingly sophisticated mixed-imitative systems that take over more of the documentation task, to essentially autonomous or ‘autopilot’ systems that take charge of documentation. Clinical decision support functions can be embedded in the documentation process with increasing sophistication, to the point that documentation disappears as a foreground task and clinical processes become primary
Functional characteristics of digital scribe systems
| Exemplar functions | Description | |
|---|---|---|
| Human led documentation | Standard templates, paragraphs and macros | Common documentation tasks or content are predefined and called when needed |
| Speech recognition and transcription | Speech recognition (SR) technologies create verbatim transcripts of human speech | |
| Automated proofing | Combining natural language processing and access to biomedical vocabularies, text can be checked for potential semantic errors. | |
| Simple digital assistants | SR can be used to issue voice commands to navigate the EHR; | |
| Mixed-initative documentation | Conversational interaction model | Documentation context, stage or content can be indicated by human interaction with the documentation system using predefined gestures, commands or conversational structures. |
| Computer generated summary of encounter | Extractive and abstractive text summarisation methods convert speech and other data gathered in an encounter into a succinct summary, requiring knowledge both about record structure as well as relevant biomedical knowledge. | |
| EHR triggered decision aids | Clinical decision support systems can be invoked at any point from data gathering to treatment decision, suggesting additional questions or observations, and alternate diagnoses, tests and treatments. | |
| Computer-led documentation | AI will be expert in the form and content of clinical encounters, encounter records, and utilise rich models of the knowledge base underpinning specific clinical domains. | “Autopilot” systems that automatically document clinical encounters, and only prompt humans in exceptional circumstances. |
| Intelligent clinical environment | Ambient listening | High fidelity location aware SR coupled with speaker identification allows speech driven interaction anywhere within an environment. |
| Multiple sources of sensor acquired data | Fusion and interpretation of signals from motion detection, video, clinical instrumentation, and user commands allow recording of physical examination and measurements. | |
| Advanced digital assistants | Detected events and machine-recognised context trigger situationally appropriate decision aids and record content, e.g. dynamic critiquing and refinement of the clinical encounter. |
The processes of supporting clinical documentation and supporting decisions can be richly supported by a variety of technologies. The opportunities to re-engineer the clinical encounter away from documentation and towards decision-making increase as digital scribe systems become more autonomous, and the clinical environment becomes digitally enabled with interaction technologies for speech and gesture recognition, sensor fusion, and artificial intelligence