Innovative informatics interventions to improve health and health care.
Author(s): Bakken, Suzanne
DOI: 10.1093/jamia/ocac255
Author(s): Bakken, Suzanne
DOI: 10.1093/jamia/ocac255
Outpatient no-shows have important implications for costs and the quality of care. Predictive models of no-shows could be used to target intervention delivery to reduce no-shows. We reviewed the effectiveness of predictive model-based interventions on outpatient no-shows, intervention costs, acceptability, and equity.
Author(s): Oikonomidi, Theodora, Norman, Gill, McGarrigle, Laura, Stokes, Jonathan, van der Veer, Sabine N, Dowding, Dawn
DOI: 10.1093/jamia/ocac242
As mobile health applications continue to proliferate without clear regulation, the need for app evaluation frameworks to offer guidance to patients and clinicians also expands. However, this expanding number of app evaluation frameworks itself can be a source of confusion and often contradictory recommendations. In pursuit of better frameworks that offer innovation for app evaluation, we present 4 challenges that app evaluation frameworks must overcome as well as examples from [...]
Author(s): Alon, Noy, Torous, John
DOI: 10.1093/jamia/ocac244
Raw audit logs provide a comprehensive record of clinicians' activities on an electronic health record (EHR) and have considerable potential for studying clinician behaviors. However, research using raw audit logs is limited because they lack context for clinical tasks, leading to difficulties in interpretation. We describe a novel unsupervised approach using the comparison and visualization of EHR action embeddings to learn context and structure from raw audit log activities. Using [...]
Author(s): Lou, Sunny S, Liu, Hanyang, Harford, Derek, Lu, Chenyang, Kannampallil, Thomas
DOI: 10.1093/jamia/ocac239
Progression of HIV disease, the transmission of the disease, and premature deaths among persons living with HIV (PLWH) have been attributed foremost to poor adherence to HIV medications. mHealth tools can be used to improve antiretroviral therapy (ART) adherence in PLWH and have the potential to improve therapeutic success.
Author(s): Schnall, Rebecca, Sanabria, Gabriella, Jia, Haomiao, Cho, Hwayoung, Bushover, Brady, Reynolds, Nancy R, Gradilla, Melissa, Mohr, David C, Ganzhorn, Sarah, Olender, Susan
DOI: 10.1093/jamia/ocac233
Over 20% of US adults report they experience pain on most days or every day. Uncontrolled pain has led to increased healthcare utilization, hospitalization, emergency visits, and financial burden. Recognizing, assessing, understanding, and treating pain using artificial intelligence (AI) approaches may improve patient outcomes and healthcare resource utilization. A comprehensive synthesis of the current use and outcomes of AI-based interventions focused on pain assessment and management will guide the development [...]
Author(s): Zhang, Meina, Zhu, Linzee, Lin, Shih-Yin, Herr, Keela, Chi, Chih-Lin, Demir, Ibrahim, Dunn Lopez, Karen, Chi, Nai-Ching
DOI: 10.1093/jamia/ocac231
Enabling clinicians to formulate individualized clinical management strategies from the sea of molecular data remains a fundamentally important but daunting task. Here, we describe efforts towards a new paradigm in genomics-electronic health record (HER) integration, using a standardized suite of FHIR Genomics Operations that encapsulates the complexity of molecular data so that precision medicine solution developers can focus on building applications.
Author(s): Dolin, Robert H, Heale, Bret S E, Alterovitz, Gil, Gupta, Rohan, Aronson, Justin, Boxwala, Aziz, Gothi, Shaileshbhai R, Haines, David, Hermann, Arthur, Hongsermeier, Tonya, Husami, Ammar, Jones, James, Naeymi-Rad, Frank, Rapchak, Barbara, Ravishankar, Chandan, Shalaby, James, Terry, May, Xie, Ning, Zhang, Powell, Chamala, Srikar
DOI: 10.1093/jamia/ocac246
Electronic health records (EHRs) are increasingly used to capture social determinants of health (SDH) data, though there are few published studies of clinicians' engagement with captured data and whether engagement influences health and healthcare utilization. We compared the relative frequency of clinician engagement with discrete SDH data to the frequency of engagement with other common types of medical history information using data from inpatient hospitalizations.
Author(s): Iott, Bradley E, Adler-Milstein, Julia, Gottlieb, Laura M, Pantell, Matthew S
DOI: 10.1093/jamia/ocac251
Electronic health records (EHRs) offer decision support in the form of alerts, which are often though not always interruptive. These alerts, though sometimes effective, can come at the cost of high cognitive burden and workflow disruption. Less well studied is the design of the EHR itself-the ordering provider's "choice architecture"-which "nudges" users toward alternatives, sometimes unintentionally toward waste and misuse, but ideally intentionally toward better practice. We studied 3 different [...]
Author(s): Grouse, Carrie K, Waung, Maggie W, Holmgren, A Jay, Mongan, John, Neinstein, Aaron, Josephson, S Andrew, Khanna, Raman R
DOI: 10.1093/jamia/ocac238
Author(s):
DOI: 10.1093/jamia/ocac249