Pandemic Pause: Systematic Review of Cost Variables for Ambulatory Care Organizations Participating in Accountable Care Organizations
Abstract
:1. Introduction
1.1. Rational
1.2. Objectives
2. Methods
2.1. Inclusion Process
2.2. Exclusion Process
3. Results
4. Discussion
4.1. Cost Reduction: Enhanced Care Management/Patient Navigation
4.2. Cost Reduction: Health Information Technology
4.3. Cost Reduction: Ownership/Reimbursement Model
4.4. Cost Influencer: Social Determinants of Health/Environmental
4.5. Cost Influencer: Integration/Standardization Challenges
4.6. Cost Influencer: Misalignment of Financial Incentives
5. Study Limitations
6. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Author(s) | Participant(s) | * JHNEBP Study Design | ACO Variables (Constructs) That Decrease Costs to Ambulatory Care Organizations | ACO Variables (Constructs) That Increase Costs to Ambulatory Care Organizations |
---|---|---|---|---|
Colla et al. [8] | Medicare (overall) population and clinically vulnerable sub-group. | 2 | No geographic variables (patient/ACO location) identified as a contributory variable in the study. Results are similar to the Physician Group Practice Demonstration and the Pioneer program across all patient groups (specifically < hospitalizations (ER) and <utilization overall). | Specific diagnoses (conditions) identified that significantly increased costs. Specific components and (care modality) significantly identified to increased costs. Vast differences in spending across ACO models identified. Greater structural changes recommended beyond utilization and hospitalizations required for enhanced patient outcomes. |
D’Aunno et al. [9] | Medicare Shared-Savings ACOs | 2 | Establishment of relationship with local hospitals before ACO formation. Large (200+) provider groups with quality care established prior to ACO formation. Pre-established and meaningful EMR utilization already in-place. Use of care coordinators in the physician practice. | Distance between physician practices (geographic dispersion). Competition regarding primary care services between the physician practices and local hospital(s). Local hospital lack of awareness/identification of patients and the 30-day readmission criterium. |
Fraze et al. [10] | Medicare Shared-Savings ACOs, focus on diabetes management | 2 | Organizations with multiple ACO contracts tended to perform better with diabetes management also. Organizations that offer more comprehensive services. | Integration with community health centers and/or hospitals. ACO performance on diabetes management decreased after contract year one (possibly due to transition from pay-for-reporting to pay-for-performance). |
Gupta et al. [11] | Various UCLA clinic network patients with high expenditures: dementia, chronic kidney disease (CKD), and cancer | 2 | Leveraging of midlevel practitioners and care coordinators, health IT infrastructure, and other shared resources to reach the subpopulations of patients who may benefit most from specific interventions. Use of a patient health value (PHV) categorization to assist with identification of specific diagnosis needs and interventions.Use of a system wide PHV establishes a culture of value. | Fragmented care between UCLA network clinics. Initial lack of care goals documentation. |
Hibbard et al. [12] | Primary care outpatient clinics with a high prediction of future utilization (ED visits and specific, future diagnoses). | 3 | Controlling baseline chronic disease status will prevent future utilization. Use of other opportunities to identify high-risk, high-utilization patients early. Incorporation of the patient’s ability for self-care/self-management. Investment in early interventions with high-risk patients does pay-off long term. | Focusing on clinic risk factors only, versus also incorporating system delivery challenges. |
Ho et al. [13] | Percutaneous coronary intervention (PCI) patients in the VA health care system. | 2 | Outpatient care opportunities to explore differences in follow-up care, some of which may be related to the intensity of care provided, frequency of cardiac testing, and/or a need for noncardiac-related care. | Higher costs were associated with higher hospital utilization. |
Hofler & Ortiz [14] | Rural health primary care clinics. | 2 | Consideration must be granted to demographic and limited clinical workforce make-up. Clear guidelines regarding primary care providers and related expectations in a rural environment. | Simply joining an ACO increases cost per visit, often up to or beyond two years. Incompatible EHR systems between organizations. ACO-related standardization costs for clinical personnel. |
Horny et al. [15] | Clinics with patients enrolled in the diabetes specialty clinic with A1C ≥ 8.5% and at least one appointment no-show in the past year. | 2 | Use of non-clinical patient navigators to help improve both medical and administrative patient outcomes. Navigators keenly aware of specific patient needs and accommodating when scheduling appointments, limiting ED visits. Trained navigators as patient ‘peers’ versus healthcare providers. | Diabetes patients failing to schedule appointments, missing appointments, and had more unscheduled clinic visits (not part of patient navigation program). Alternative was ED utilization with compounded ailments. |
Alhossan et al. [16] | Pharmacy for patients who recently received an annual wellness visit at a federally qualified health center participating in an ACO. | 3 | Utilization of clinical pharmacists during the annual wellness visit led to increased acceptance and utilization of recommendations for patients. Clinical pharmacist integration in the annual wellness visit allow for additional time freed-up for other medical providers. While additional screenings were recommended by the clinical pharmacist, this also led to additional revenue for the clinic. | Failure to integrate a clinical pharmacist in the treatment of patients in ACOs may forego additional benefits. |
Koh et al. [17] | Longitudinal claims and enrollment data from the Massachusetts Medicaid pro-gram ACO. | 2 | Addressing patients’ medical, behavioral health, and case management needs in a home setting, versus in a clinic. Attention towards social determinants of health including homelessness needs to be built in both the ACO treatment protocols, and the financial reimbursement methods. | Homelessness identified as a significant variable (social determinant of health) for increased ACO spending. Frequent patient address changes and contact information. |
Kralewski et al. [18] | 2009 national survey of 211 group practices linked to Medicare claims data. | 3 | Physician owned and “other” owned practices are associated with better screening and quality measures than hospital owned practices. Better patient screening measures resulted in lower costs. Quality of care evaluation and ratings at the individual provider level. | Quality of care financial remuneration at the organization level only (group-level performance evaluation). |
Lin et al. [19] | Medicare ACO claims data to analyze in and out of network specialty care. | 2 | Small changes to out of network primary care delivery can have large effects on overall organizational performance. | Increased levels of out of network specialty care for ACO patients ($10.79 increase in spending per beneficiary, per quarter). More out-of-network primary care was associated with higher total spending. |
McConnell et al. [20] | Oregon and Colorado Medicaid ACO models. | 3 | A strong focus on manageable, incremental steps has been followed by growth in enrollment, reductions in utilization, and improvement in key performance indicators. Planning for future, additional efforts of additional utilization controls. | 2014 Affordable Care Act Medicaid expansion efforts suspected to result in primary care capacity experienced. Short timeframe to transition to the ACO model leads to inefficiencies. |
McWilliams et al. [21] | Medicare claims data of ACO programs. | 2 | Policy implication: In a one-sided contract without downside risk, an ACO that increases spending in one contract period is not penalized for doing so and is rewarded in the subsequent period with a higher benchmark. Questionable ‘gaming’ behavior suspected by healthcare organization’s selection of providers and/or patients that possibly led to increased ACO reimbursements. | Policy implication: An ACO that lowers spending in one contract period is disadvantaged in the subsequent contract period with a lower benchmark. Authors argue to disassociate the link between current benchmark performance and prior ACO savings. |
McWilliams et al. [22] | Fee-for-service Medicare claims data to compare hospital-integrated ACOs versus physician group ACOs. | 2 | Physician group ACOs demonstrated significant reduction in savings. | Hospital-integrated ACOs showed no reduction in savings. |
Navathe et al. [23] | n/a | 3 | Authors conclude “Extending the duration of the bundles, expanding the accountable entities beyond hospitals, and integrating bundled payments with global budget models within ACOs) better align episode-based payment with population health and offer a smoother path to budgets.” | Incongruent reimbursement models recognized for high historical baseline payments for patients that have poor care outcomes when integrated into an ACO bundle. |
Bannon et al. [24] | University of Utah Health System Medicaid ACO high-risk patients. | 2 | Specific outpatient programs for care-intensive patients that are custom-tailored to the communities they serve. Re-direction of pre-identified, high utilization patients to an “intensive outpatient clinic” versus standard treatment localities. | While utilization of such high-utilization clinics has been conducted at other organizations, the authors cite a failure to further address patient outcomes and effective cost savings in the end. |
Ouayogode et al. [25] | Survey information on care management and coordination processes linked to Medicare ACO claims data. | 2 | Suggested use of care navigators to assist with limiting readmissions and overall hospitalizations. | Failure to assess care coordination and management efforts. |
Rosenthal et al. [26] | Medicaid claims/encounter data. | 2 | Utilize lessons learned from ACO pioneer programs and incorporate findings into local ACO program(s). | Under-resourced and highly regulated Medicaid models at the state level. Over-reliance upon claims data only, versus the incorporation of clinical-outcomes data. |
Schumacher et al. [27] | Chronic heart failure patients at a large, networked medical group. | 2 | Expanded use of a clinical pharmacist to identify opportunities to better care for comorbidities. Use of a clinical pharmacist to develop heart failure and other treatment protocols to assist integrated providers. The clinical pharmacist was able increase the scope of practice and patient panels through physician referrals. | No cost increase variables. |
Shah et al. [28] | Clinically integrated delivery system participating as a Pioneer ACO. | 2 | Use of increased telehealth resulted in a reduction of in-person patient visits, while increasing overall visits by 80%. A virtual visit program is able to limit overutilization, while also increasing access to care. | ACO provider organizations will bear the costs of new/updated telehealth implementation efforts (no health insurers, etc). The study notes caution to not assume a long-lasting reduction in in-person visits over a duration of time (eventually will plateau). Disparities surrounding patient demographics and access to telehealth technologies noted as a program disadvantage to some patients. |
Beckman et al. [29] | Two primary care physician-led ACO organizations and Medicare beneficiaries receiving annual wellness visits. | 2 | Use of first-time annual wellness visits decreased overall organizational costs when compared to the control group. Patients receiving annual wellness visits to did seek care at a hospital had less severe illnesses than the control group. Incentivizing all stakeholders associated with primary care leads to cost reductions/savings. | Enhancing primary care services beyond “usual” care offers mixed results and not necessarily cost savings. |
Blewett & Owen [30] | Hennepin (MN) Health Medicaid ACO | 3 | Enhanced use of patient care technology and data sharing led to a reduction in hospital visits and a slight (3.3%) increase in outpatient clinic visits. Requirement for better (ongoing) data sharing among state Medicaid organizations (payers) and health care organizations. | Lack of a state or national program for low income ACO populations cited as a concern for future risk. |
Burgon et al. [31] | Comparison of regional ACO patient outcomes with non-participating organizations/patients. | 2 | Physicians in ACOs with evidence-based feedback significantly improved care and cost-efficiency. Improvements in the simulations correlated with im-proved performance in patient-level quality measures. | Lack of appropriate tools and provider feedback loops disallow the opportunity to improve during the quality reporting period(s). |
Chang et al. [32] | Long-term Medicare nursing home patients attributed to an ACO model. | 2 | ACO long-term nursing home residents had less use of discretionary care. Continued opportunities to help reduce cost due to unnecessary utilization exists, as nursing home patients often generate a significant volume of E&M provider visits. | While fewer ED and other hospitalizations were identified for patients under the ACO attribute, cost reductions were not experienced. Patients switching providers frequently within an ACO reporting period can lead to cost ramifications beyond quality outcome reporting. |
- Level 1, experimental study/randomized control trial (RCT)
- Level 2, quasi-experimental study
- Level 3, non-experimental, qualitative, or meta-synthesis study
- Level 4, opinion of nationally recognized experts based on research evidence/consensus panels
- Level 5, opinions of industry experts not based on research evidence
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Lieneck, C.; Weaver, E.; Maryon, T. Pandemic Pause: Systematic Review of Cost Variables for Ambulatory Care Organizations Participating in Accountable Care Organizations. Healthcare 2021, 9, 198. https://doi.org/10.3390/healthcare9020198
Lieneck C, Weaver E, Maryon T. Pandemic Pause: Systematic Review of Cost Variables for Ambulatory Care Organizations Participating in Accountable Care Organizations. Healthcare. 2021; 9(2):198. https://doi.org/10.3390/healthcare9020198
Chicago/Turabian StyleLieneck, Cristian, Eric Weaver, and Thomas Maryon. 2021. "Pandemic Pause: Systematic Review of Cost Variables for Ambulatory Care Organizations Participating in Accountable Care Organizations" Healthcare 9, no. 2: 198. https://doi.org/10.3390/healthcare9020198
APA StyleLieneck, C., Weaver, E., & Maryon, T. (2021). Pandemic Pause: Systematic Review of Cost Variables for Ambulatory Care Organizations Participating in Accountable Care Organizations. Healthcare, 9(2), 198. https://doi.org/10.3390/healthcare9020198