Abstract: Embodiments relate to system for automatically predicting payer response to claims. In an embodiment, the system receives claim data associated with a claim. The system identifies a set of claim features of the claim data, and generates an input vector with at least a portion of the set of claim features. The system applies the input vector to a trained model. A first portion of the neural network is configured to generate an embedding representing the input vector with a lower dimensionality than the input vector. A second portion of the neural network is configured to generate a prediction of whether the claim will be denied based on the embedding. The system provides the prediction for display on a user interface of a user device. The prediction may further include denial reason codes and a response date estimation to indicate if, when, and why a claim will be denied.
Type:
Grant
Filed:
December 8, 2023
Date of Patent:
February 18, 2025
Assignee:
AKASA, Inc.
Inventors:
Byung-Hak Kim, Hariraam Varun Ganapathi, Andrew Atwal
Abstract: Disclosed are a system, method and apparatus to generate service codes based, at least in part, on electronic documents. In an embodiment, tokens may be embedded in an electronic document based, at least in part, on a linguistic analysis of the electronic document. Likelihoods of applicability of service codes to the electronic document may be determined based, at least in part, on the embedding of tokens.
Type:
Grant
Filed:
March 18, 2021
Date of Patent:
June 11, 2024
Assignee:
AKASA, INC.
Inventors:
Byung-Hak Kim, Hariraam Varun Ganapathi
Abstract: Embodiments relate to system for automatically predicting payer response to claims. In an embodiment, the system receives claim data associated with a claim. The system identifies a set of claim features of the claim data, and generates an input vector with at least a portion of the set of claim features. The system applies the input vector to a trained model. A first portion of the neural network is configured to generate an embedding representing the input vector with a lower dimensionality than the input vector. A second portion of the neural network is configured to generate a prediction of whether the claim will be denied based on the embedding. The system provides the prediction for display on a user interface of a user device. The prediction may further include denial reason codes and a response date estimation to indicate if, when, and why a claim will be denied.
Type:
Grant
Filed:
June 29, 2021
Date of Patent:
January 2, 2024
Assignee:
AKASA, Inc.
Inventors:
Byung-Hak Kim, Hariraam Varun Ganapathi, Andrew Atwal
Abstract: Embodiments relate to system for automatically predicting payer response to claims. In an embodiment, the system receives claim data associated with a claim. The system identifies a set of claim features of the claim data, and generates an input vector with at least a portion of the set of claim features. The system applies the input vector to a trained model. A first portion of the neural network is configured to generate an embedding representing the input vector with a lower dimensionality than the input vector. A second portion of the neural network is configured to generate a prediction of whether the claim will be denied based on the embedding. The system provides the prediction for display on a user interface of a user device. The prediction may further include denial reason codes and a response date estimation to indicate if, when, and why a claim will be denied.
Type:
Grant
Filed:
March 13, 2020
Date of Patent:
November 9, 2021
Assignee:
AKASA, Inc.
Inventors:
Byung-Hak Kim, Hariraam Varun Ganapathi, Andrew Atwal