Date of publication XXXX 00, 0000, date of current version XXXX 00, 0000


Figure 4. Optimal Performance Achieved with 10



Yüklə 217,03 Kb.
Pdf görüntüsü
səhifə11/13
tarix07.01.2024
ölçüsü217,03 Kb.
#211335
1   ...   5   6   7   8   9   10   11   12   13
FL for clinical events classification IEEE

Figure 4. Optimal Performance Achieved with 10 
Rounds and 5 Clients for Various Machine Learning 
Models
 
The results of our study demonstrate a significant 
improvement in classification accuracy compared to other 
research approaches in the field of clinical event 
classification. Our method, which incorporates federated 
learning, achieved an impressive 98.9% accuracy, 
outperforming all other methods investigated in this 
comparison. This finding highlights the effectiveness and 
potential of federated learning in enhancing the performance 
of machine learning models for clinical event classification. 
The superior performance of our federated learning-based 
method can be attributed to its ability to leverage distributed 
datasets, maintain data privacy, and facilitate collaborative 
learning among multiple clients. This approach allows for 
the development of robust models that can generalize better 
and adapt to diverse data sources, ultimately leading to 
improved classification accuracy. 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
Table 3. Superior Performance of Federated Learning-
based Method in Clinical Event Classification 
 
 
Research 
in [29] 
Research 
in [30] 
Research 
in [31] 
Our 
model 
Number 
of 
fixtures 




Vital 
signs 
HR, BP, 
RR, SPO 
BP 
HR, BP 
HR, 
BP, 
RR, 
SPO 
Clinical 
event 
Any
Any
Any
Any
Number 
of normal 
samples 
1300 
30 
571 
Number 
of 
abnormal 
samples 
130 
30 
116 
Accuracy 
95.5 
average 
94% 
ROC 
max 0.86 
98.9 
Federated 
learning 
No 
No 
No 
Yes 
Основной
Основной
Основной
Основной
Основной
Основной
Основной
Random
Forest
AdaBoots
Classifier
Logistic
Regression
Gaussian
SGV
Machine Learning results
Train
Test


Ruzaliev R: 
Federated Learning for Clinical Event Classification Using Vital 
Signs Data 

VOLUME XX, 2023 

Yüklə 217,03 Kb.

Dostları ilə paylaş:
1   ...   5   6   7   8   9   10   11   12   13




Verilənlər bazası müəlliflik hüququ ilə müdafiə olunur ©azkurs.org 2024
rəhbərliyinə müraciət

gir | qeydiyyatdan keç
    Ana səhifə


yükləyin