Process Mining Based Critical Path Recommendation in Healthcare Management
Date
2018
Authors
Thomas, Likewin
Journal Title
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Volume Title
Publisher
National Institute of Technology Karnataka, Surathkal
Abstract
From the literature it was studied that, most of the medical error was due to the faulty
system/ process, because of which there is a delay in treatment management, leading to
complications in later stages. Proper management of healthcare system is necessary to
provide good medical care. Medical error due to failure in the healthcare system can be
reduced by employing an appropriate clinical decision support system (CDSS). CDSS
helps in identifying the severity of disease, predicting its progression, and recommending required resources for proper management of the disease. In the recent years, the
information system is employed in the healthcare system to improve the management of
healthcare.
CDSS are being used to predict the disease progression and length of stay in the
hospital. In our work, a CDSS was developed with the help of process mining techniques
for providing improved treatment management. Process mining with its ability to build
e cient process models was used for discovering this critical treatment path. The critical
treatment path is a sequence of clinical and non-clinical activities that are critical. Process mining helps in stream-lining these activities along with the e cient resources for
performing those activities. The gallstone disease treatment management is considered
as a case study in this work.
Modi ed Cascade Neural Network (ModCNN) was built upon the architecture of
Cascade-Correlation Neural Network (CCNN) and, was trained and tested using the
ADAptive LInear NEuron (ADALINE) circuit. In CDSS the performance of ModCNN
was evaluated and compared with Arti cial Neural Network (ANN) and CCNN. CDSS,
using ModCNN strati ed the cases that may need Endoscopic Retrograde CholangioPancreatography (ERCP) as the treatment progresses. Our result shows improvement in
accuracy of prediction and reduction in waiting time. ModCNN showed better accuracy
of 96:42% for predicting the disease progression when compared with CCNN (93:24%)
and ANN (89:65%). CDSS developed in this work is aimed at providing better treatment
planning to reduce medical error.
Description
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Department of Computer Science & Engineering