International Journal of Advances in Applied Computational Intelligence
  IJAACI
  2833-5600
  
   10.54216/IJAACI
   https://www.americaspg.com/journals/show/2974
  
 
 
  
   2022
  
  
   2022
  
 
 
  
   Intelligent Data Processing and Mining of Histopathological Images using Improved Tunicate Swarm Algorithm with Deep Learning
  
  
   Online Islamic University, Department Of Science and Information Technology, Doha, Qatar
   
    Rama
    Rama
   
   Cairo University, Cairo, Egypt
   
    Arwa
    Hajjari
   
  
  
   Intelligent data processing and mining of histopathological images involve the application of advanced techniques and algorithms to analyze and extract meaningful information from digital pathology images. Osteosarcoma is a general malignant bone cancer generally established in teenagers and children. Manual diagnoses of osteosarcoma is a laborious task and needs skilled professionals. The mortality rate can be minimalized only if it is identified on time. Automatic detection systems and new technologies were utilized to classify and analyze medical images that, minimalize the dependency on specialists and result in fast processing. Recently, a lot of Computer-Aided Diagnosis (CAD) systems were proposed by research workers to diagnose and segment osteosarcoma from medical images. Deep learning (DL) algorithms are employed for the automated recognition and identification of osteosarcoma on histopathological images (HSI). The study proposes an Improved Tunicate Swarm Algorithm with Deep Learning for Osteosarcoma Detection and Classification (ITSA-DLODC) approach on pathological imageries. The proposed ITSA-DLODC method mainly enhances the recognition and classification of osteosarcoma on HSI. To attain this, the presented ITSA-DLODC method performs feature extraction using ShuffleNet convolutional neural network model. Besides, the ITSA-based hyperparameter optimizer is exploited to finetune the hyperparameters of the ShuffleNet model. Moreover, the salp swarm algorithm (SSA) with convolutional autoencoder (CAE) approach was utilized for the recognition and identification of osteosarcoma. A wide range of analyses can be applied to exemplify the higher performance of the ITSA-DLODC methodology. The simulation study demonstrated the development of the ITSA-DLODC methodology over other present models
 
  
  
   2024
  
  
   2024
  
  
   40
   55
  
  
   10.54216/IJAACI.050104
   https://www.americaspg.com/articleinfo/31/show/2974