dc.description.abstract |
Hemodialysis is of paramount importance to patients who undergo renal failure and kidney
dysfunction. It requires precise control and monitoring to ensure the safety of the patient
and the efficacy of the process. HemoSys is a high-end framework for the revolutionized
operation of hemodialysis machines by real-time monitoring, data management, and
predictive modeling. The system will answer all diverse needs related to hemodialysis
treatment. It has highly developed peristaltic pumps and syringe pump controllers to
manage blood and dialysate flows, assuring cautious fluid management. Advanced sensors
are integrated for real-time monitoring of pressure, temperature, and bubble formation that
support the continuous tracking of critical parameters of treatment. The Graphical User
Interface enables users to easily interact with real-time visualization of sensor data and
offers intuitive controls for the hemodialysis operation. Other than the operational
capacities, several strong data management features are hosted by HemoSys. All patients,
operators, physicians, and sessions data get stored in a MySQL database, thereby providing
an efficient retrieval and update of data. The system also offers export options to PDF and
excel, thereby enhancing data accessibility and usability. One of the unique features of
HemoSys is predictive modeling incorporated in the software framework. In this research,
Random Forest, XG Boost, Cat Boost and Light GBM were employed, trained on the
hemodialysis patient data of 10352 dialysis sessions, to predict the adequacy of
hemodialysis session based on all the relative variables instead of only relying on few
variables like Kt/V, Ultrafiltration etc. These models were trained using RFE and PCA
methods to find the best feature classification/reduction technique for adequacy prediction.xvii
The paired t-test indicated that there was a significant difference between outcome
parameters for both in feature reduction techniques and RFE was proved better. And under
RFE, the paired t-test was employed on performance matrix (accuracy, precision, F1 score,
recall and AUROC) of all the models and there was significant difference between two
combinations (RF, XG Boost) and (RF, LGBM). XG Boost and LGBM performed best
based on outcome parameters (0.9932, 0.9949, 0.0.9949, 0.9949, 0.9924) and (0.9931,
0.9949, 0.9952, 0.9951, 0.9916) respectively. HemoSys is the step forward to introduce
predictive modelling in dialysis technology to provide operators with significant insight to
change session parameters for better patient outcomes. This approach increases safety,
efficiency, and effectiveness regarding hemodialysis treatment and is therefore a very
promising solution for healthcare providers, patients, and all stakeholders. |
en_US |
dc.subject |
Hemodialysis, CKD, ESRD, predictive modeling, data management, dialysis adequacy, medical device operation, health informatics and machine learning in medicine. |
en_US |