4.7 Article

HomeADScreen: Developing Alzheimer's disease and related dementia risk identification model in home healthcare

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ELSEVIER IRELAND LTD
DOI: 10.1016/j.ijmedinf.2023.105146

Keywords

Alzheimer's disease and related dementia; (ADRD); Home healthcare (HHC); Clinical notes; Machine learning; Natural language processing

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This study developed HomeADScreen, a risk screening model for Alzheimer's disease and related dementia (ADRD) based on structured data from home healthcare (HHC) patients and information extracted from HHC clinical notes. By combining natural language processing with Outcome and Assessment Information Set (OASIS) data, the model achieved good performance in predicting ADRD risk and showed improvement in overall performance across different time windows. Risk factors such as hearing impairment and impaired patient ability in using telephone were associated with increased risk of ADRD.
Background: More than 50 % of patients with Alzheimer's disease and related dementia (ADRD) remain undiagnosed. This is specifically the case for home healthcare (HHC) patients.Objectives: This study aimed at developing HomeADScreen, an ADRD risk screening model built on the combination of HHC patients' structured data and information extracted from HHC clinical notes. Methods: The study's sample included 15,973 HHC patients with no diagnosis of ADRD and 8,901 patients diagnosed with ADRD across four follow-up time windows. First, we applied two natural language processing methods, Word2Vec and topic modeling methods, to extract ADRD risk factors from clinical notes. Next, we built the risk identification model on the combination of the Outcome and Assessment Information Set (OASISstructured data collected in the HHC setting) and clinical notes-risk factors across the four-time windows.Results: The top-performing machine learning algorithm attained an Area under the Curve = 0.76 for a four-year risk prediction time window. After optimizing the cut-off value for screening patients with ADRD (cut-off-value = 0.31), we achieved sensitivity = 0.75 and an F1-score = 0.63. For the first-year time window, adding clinical note-derived risk factors to OASIS data improved the overall performance of the risk identification model by 60 %. We observed a similar trend of increasing the model's overall performance across other time windows. Variables associated with increased risk of ADRD were hearing impairment and impaired patient ability in the use of telephone. On the other hand, being non-Hispanic White and the absence of impairment with prior daily functioning were associated with a lower risk of ADRD.Conclusion: HomeADScreen has a strong potential to be translated into clinical practice and assist HHC clinicians in assessing patients' cognitive function and referring them for further neurological assessment.

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