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Brief Title: Population-Based Patient-Centric Care: Comprehensive Preventive Cancer Screening Using Health IT
Official Title: Technology for Optimizing Population Care in a Resource-limited Environment
Study ID: NCT01372527
Brief Summary: Although there is considerable evidence that current health IT can improve certain elements of care, the most effective and efficient implementation of health IT systems for primary care population management are not currently known. Indeed, while many systems currently take a "case-management" approach to identify and address clinical care issues for high risk patients, no systems to our knowledge apply a risk-based approach that accounts both for adverse clinical outcome risk (e.g. breast cancer in a woman who has not had indicated screening for 4 years) and for clinical process risk (e.g. the likelihood that a specific patient will ignore a reminder letter and would therefore benefit from direct phone or in person contact). The investigators propose to directly test the hypothesis that implementing a health IT platform that 1) provides novel risk-based decision support using data derived from the electronic health record (EHR) and 2) leverages each clinician's unique knowledge of his or her patient panel will result in more effective and more efficient population-based primary care. The investigators will test this hypothesis in a practice-randomized clinical trial of preventive cancer screening within our primary care Practice-Based Research Network (PBRN).
Detailed Description: In prior NIH-funded research, the investigators have demonstrated the efficacy of an IT-based population management system to improve breast cancer screening (NCI R21 CA121908). The investigators will expand our current IT platform from this single function (breast cancer screening) to a package of cancer prevention actions (breast, cervical, and colorectal cancer screening) and examine the added benefit of population-level preventive cancer care that is directed by specific clinician knowledge of individual patient needs. Moreover, rather than compare our system to currently sub-optimal "usual care" practice, our goal is to test whether the impact of our intervention exceeds the current state-of-the-art of IT-based population management. Therefore, control group practices will receive augmented standard care defined as a population-level reminder system with automated patient contacts. In augmented standard care control practices, the investigators will implement a system that includes: 1) a population-based perspective to identify all eligible patients overdue for screening, 2) an automated, centralized process to contact selected patients by letter, 3) a result management system that automatically tracks test scheduling and completion, 4) a web-based, easily accessible tool allowing practice personnel to contact patients not completing testing, and 5) use of patient navigators for high risk patients not responding to initial outreach. In the control arm, the process of escalating the reminder intervention from a letter, to contact by phone call, to a patient navigator, will occur in a standard algorithmic fashion without provider input. While not yet the standard of care nationwide, prior studies have proven the efficacy of such an approach. In intervention practices, the investigators will enhance augmented standard care by implementing a novel system that will enable physicians and clinical population managers to individualize care for each patient in their panel using tools to classify and organize patients by their clinical attributes. The investigators hypothesize that this personalized identification of patients by both their clinical outcome and clinical process risk status will improve the efficacy and efficiency of resource allocation decisions. The key additions to the health IT system for intervention practices will be: 1) a clinical systems IT platform to organize and present clinical data for each clinician's patient panel, 2) an accessible Web-based tool allowing clinicians (physicians and clinical population managers) to view, organize, and investigate their patient panels, and 3) a simple process where the clinician can make a tailored screening decision and designate the method of clinical intervention based upon the patient's risk profile.
Minimum Age: 21 Years
Eligible Ages: ADULT, OLDER_ADULT
Sex: ALL
Healthy Volunteers: Yes
Massachusetts General Hospital, Boston, Massachusetts, United States
Name: Steven J Atlas, MD, MPH
Affiliation: Massachusetts General Hospital
Role: PRINCIPAL_INVESTIGATOR