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Gritman Medical Center. Ben Wood Tessa Scholl Marc Boisvert Mimi Sproul Darren Schnider. Problems. Delays Internal Common among users of manual systems Every time someone comes in contact with a process, there is a 5% chance that an error will occur within the step
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Gritman Medical Center Ben Wood Tessa Scholl Marc Boisvert Mimi Sproul Darren Schnider
Problems • Delays • Internal • Common among users of manual systems • Every time someone comes in contact with a process, there is a 5% chance that an error will occur within the step • Unneeded queues build up • Charts are not taken by staff frequently because it reduces productivity • Every process that has a 95% chance of success (1- 5% of error) requires additional time in auditing to fix • Up to 10 minutes hands on time in system • Days out of system if returned by payee • External • People do not pay
Problems (continued) • Faster collections from insurance and payee • Problems: • Extended time for bill insurances • Non clean bills • Ideal scenario • Collections would take place immediately post treatment • Problems solved • Possible error processing claims • Delay before Final DRG can be sent • Improved personnel allocation • Can be done with automated coding and billing system
Scope Statement • Modeling current billing process to determine accounts receivable days and chart processing times • Examining possible reengineering and mistake proofing of system • Determining NPV’s of implementing new systems
Objectives • Reducing AR time • Reducing delay of collections from insurance and self pay account to increase TVOM • Emergency Room Coding & Record Keeping • Finding the best solution to decrease lag time • Five Day Window • Reducing it to 3 days • Additional Improvements • Institutional clean claims increased 10%* • Increased billing productivity by 70%** • Decreased error leads to less auditing time *http://www.medassets.com/casestudies/pages/foxchasecancercenter.aspx **http://www.medassets.com/casestudies/pages/wellmonthealthsystems.aspx
Findings • Apparent long wait times in 6.5 day window processes • Enough errors in billing to make AR age 57.37 days average • Industry findings that AR can be reduced dramatically, to at most 30 days
Recommendations • Automate billing system • Add a new financial councilor • Decrease self-pay time • If the system is unable to be automated, use improved business rules • Able to reduce queue times and improve throughput
Road map of remaining presentation • Model Description • Model Inputs • Sensitivity Analysis • Additional improvements • Emergency room • Current process and improvement • New billing program example • Accounts to concentrate on
Model Description • Gathered Information and assumptions • Inputs • Hours worked, chart processing times, staffing schedules, average payee payment periods and 90 patient types • Information collected from actual Gritman medical staff member • Model Purpose • Accurately model current billing cycle through Gritman medical center • Sensitivity Analysis • Individual changes made and reviewed for improvement
Sensitivity Analysis • Our purpose is to reduce Gritman’s AR by 40% to improve costs • Changed general business rules reducing process time while keeping old system • We are also investigating 30%, 20%, 10% and comparing each NPV to find the break even point
Model Inputs • 5 Types of Patients • Out-patient Sleep Study: OP Sleep Study • Out-patient Laboratory/Out-patient Radiology: OPL/OPR • In-patient/Out-patient Surgery/Observation: IP/OPS/Observation • Emergency Room: ER • Therapy/Series/Adult Day Health: Therapy/Series/ADH • 3 Categories of Payment Amounts • >$1,500 • $1,500 - $7,500 • <$7,500 • 6 Payment Options • Medicare • Medicaid • Blue Cross • Commercial • Self-Pay • Charity
Comparison of Processes This new process reduces both time and error increasing revenue
Largest AR issues • Average % of AR
Largest AR issues • The highlighted percentages are how many more days each of the corresponding insurances are taking over the average
Pro-Active Bill Collection Example • Different communication forms will reduce collection time of accounts • Increase the likely-hood of collection on a Self-pay Account • Students are less likely to receive/respond to letters • Should collect email at admissions • Send out an email on day 15 reiterating the 15% bill reduction if paid within the 20 days • On day 18 call and remind • Ask if bill can be paid by credit/debit card
Automated Solution Example • XactiMedRevenue Cycle Solutions • MedAssets’ Solutions • Automated System *DHMC: Dartmouth-Hitchcock Medical Center; NH **JPS: John Peter Smith Hospital; Fort worth, TX
5 Day Window Reduction • Current Process for IP/OP Surgery Admission Patient Documentation Manual Discharge On Site or Off Site Coder if Off Site: Hold Charge Entry . Auditing Final DRG AR Queue Billed to Payee Steps: 10 Time: 6+ days • New Process with automated billing and coding Admission Patient Documentation Manual Discharge Billed to Payee Steps: 4 Time: 3 days* *This minimum time is designated by Federal regulation and is out of the scope of this project to reduce
NPV • Present Value with 40% reduction • $980,000 • NPV of -$1.89 million • About $400,000 per year reduction in costs • Factors to consider • Doesn’t account for savings of reducing employee costs • Reduction of employee time for billing none value added for other processes • Doesn’t account for additional financial counselor