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Predicting Medicare Underpayments Using an LMS algorithm. Ted Shultz December, 2001 University of Wisconsin. Vanderbilt Bills Medicare for one amount. Bill: Band-Aid $0.12 Aspirin $1.04 New Hip $1,000.00 Gauss $12.00 Gloves $3.75 ------------------- TOTAL $1016.91.
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Predicting Medicare Underpayments Using an LMS algorithm Ted Shultz December, 2001 University of Wisconsin
Vanderbilt Bills Medicare for one amount Bill: Band-Aid $0.12 Aspirin $1.04 New Hip $1,000.00 Gauss $12.00 Gloves $3.75 ------------------- TOTAL $1016.91 MEDICARE Payment: (no explanation) ------------- Total $412.63 Medicare pays Vanderbilt a different amount Problem Explanation ?Why? Problem description
Comparison of Methods: Never been done before with Medicare! LARGE data file (443,964 purchases) Simultaneous equations methods: Comparison Inverse matrix method Much to large a matrix to inverted on a convention computer Orthogonal-triangular decomposition(Matlab backslash operator ) Unable to sort though possible answer to determine optimal solution based on input parameters Modified LMS method Slow, but able to bracket answer
Techniques used to handle large data file • Requires two days to load and format Matrix! (400Mhz) • Two weeks of calculations (by project definition) • Do all file manipulations in a data base program • Significant time savings • Bracket weights after each weight recalculation • Know Medicare will pay between 0-100% • Automatically resize • Start larger, but shrink for accuracy • Auto save and resume capabilities are required • CAE tethered server crashes every few days Techniques
Only about 1 week of way into calculations Full reimbursement Fixed percent Still moving or negotiated rate Results-Conclusions Guess pay amount Billed amount No payment Potential to have HUGE impact About $32M in charges, $5.5 M in reimbursements