App-Assisted Day Reconstruction to Reduce Treatment Burden and Logistic Toxicity in Cancer Patients
Daynamica, Inc., Chanhassen MN
Investigators
Abstract
PROJECT SUMMARY Each year, more than 1.7 million new cancer patients in the U.S. undergo intense, multimodal treatments that that create numerous logistical challenges in managing treatment and everyday life priorities. In the current cancer care system, âlogistic toxicityââthe toxic effects imposed by the logistical burden of carrying out cancer treatment-related tasks on patient well-beingâhas been largely unmeasured and unaddressed. Current methods for measuring logistic toxicity generate retrospective assessments intended for researchers. They do not offer timely information that empower patients to solicit assistance from care providers, employers, family, and friends. Nor do they empower providers to explore the increasingly available treatment options for patient- centered cancer care. This proposal aims to apply a new methodâapp-assisted day reconstructionâto develop the first digital health tool to enable remote patient monitoring of logistic toxicity, which is the necessary first step towards developing effective care interventions for addressing it. Our product is both conceptually and technically innovative. Conceptually, we apply the day reconstruction methodâa method initially created by well-being researchers for collecting more accurate data on daily life experiencesâto collect activity engagement and well-being information related to cancer treatment tasks. Technically, we leverage our existing patented technology and new machine learning techniques to enable novel integration of objective mobile sensing with subjective patient input. Mobile sensing and machine learning will constitute the âassistâ that the app provides for day reconstruction in relation to logistic toxicity, significantly reducing recall errors and the need for manual input. The âassistâ will also prompt patients to provide information such as subjective well-being ratings that are not detectable by mobile sensing or machine learning, generating more accurate and comprehensive measures of logistic toxicity than existing methods. The project has three specific aims, including (1) an initial system design based upon input from cancer patients and cancer care stakeholders, (2) prototype development and initial tests, and (3) field tests of the app among 60 diverse patients undergoing treatment for cancer. In Aim 3, patients will rate the quality of the app using the Mobile App Rating Scale (MARS) and their satisfaction with the three key app features: 1) the appâs ability to capture out-of-home treatment-related activities and trips, 2) the ease of the interface for inputting home-based treatment-related activities and well-being ratings, and 3) the usefulness of the logistic toxicity summary report. The outcome of this project will be a final prototype app with 70% of patients indicating an overall MARS score of 4.0 or more and satisfaction with the three features. In Phase II, the team will test the efficacy of the appâboth separately and in conjunction with care coordination, telemedicine, and home-based treatmentsâin reducing logistic toxicity and improving treatment outcomes in a randomized controlled trial.
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