DenseNet-II: an improved deep convolutional neural network for melanoma cancer detection

被引:26
作者
Girdhar, Nancy [1 ]
Sinha, Aparna [2 ]
Gupta, Shivang [2 ]
机构
[1] Bennett Univ, Sch Comp Sci Engn & Technol, Greater Noida, UP, India
[2] Amity Univ, Amity Sch Engn & Technol, Noida, UP, India
关键词
Melanoma detection; ResNet; DenseNet; VGG; Lesions; HAM10000; Deep learning; Machine learning; IMAGE CLASSIFICATION; SKIN-CANCER; ARTIFICIAL-INTELLIGENCE; COLLECTIVE INTELLIGENCE; LEVEL CLASSIFICATION; DERMATOLOGISTS; PREDICTION;
D O I
10.1007/s00500-022-07406-z
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Research in the field of medicine and relevant studies evince that melanoma is one of the deadliest cancers. It defines precisely that the condition develops due to uncontrolled growth of melanocytic cells. The current trends in any disease detection revolve around the usage of two main categories of models; these are general machine learning models and deep learning models. Further, the experimental analysis of melanoma has an additional requirement of visual records like dermatological scans or normal camera lens images. This further accentuates the need for a more accurate model for melanoma detection. In this work, we aim to achieve the same, primarily by the extensive usage of neural networks. Our objective is to propose a deep learning CNN framework-based model to improve the accuracy of melanoma detection by customizing the number of layers in the network architecture, activation functions applied, and the dimension of the input array. Models like Resnet, DenseNet, Inception, and VGG have proved to yield appreciable accuracy in melanoma detection. However, in most cases, the dataset was classified into malignant or benign classes only. The dataset used in our research provides seven lesions; these are melanocytic nevi, melanoma, benign keratosis, basal cell carcinoma, actinic keratoses, vascular lesions, and dermatofibroma. Thus, through the HAM10000 dataset and various deep learning models, we diversified the precision factors as well as input qualities. The obtained results are highly propitious and establish its credibility.
引用
收藏
页码:13285 / 13304
页数:20
相关论文
共 54 条
[1]   A deep learning model for the detection of both advanced and early glaucoma using fundus photography [J].
Ahn, Jin Mo ;
Kim, Sangsoo ;
Ahn, Kwang-Sung ;
Cho, Sung-Hoon ;
Lee, Kwan Bok ;
Kim, Ungsoo Samuel .
PLOS ONE, 2018, 13 (11)
[2]   Image Retraining Using TensorFlow Implementation of the Pretrained Inception-v3 Model for Evaluating Gravel Road Dust [J].
Albatayneh, Omar ;
Forslof, Lars ;
Ksaibati, Khaled .
JOURNAL OF INFRASTRUCTURE SYSTEMS, 2020, 26 (02)
[3]   RESULTS AND CHALLENGES OF ARTIFICIAL NEURAL NETWORKS USED FOR DECISION-MAKING AND CONTROL IN MEDICAL APPLICATIONS [J].
Albu, Adriana ;
Precup, Radu-Emil ;
Teban, Teodor-Adrian .
FACTA UNIVERSITATIS-SERIES MECHANICAL ENGINEERING, 2019, 17 (03) :285-308
[4]   Comparison of Deep Learning Approaches for Multi-Label Chest X-Ray Classification [J].
Baltruschat, Ivo M. ;
Nickisch, Hannes ;
Grass, Michael ;
Knopp, Tobias ;
Saalbach, Axel .
SCIENTIFIC REPORTS, 2019, 9 (1)
[5]   Comparative Accuracy of Diagnosis by Collective Intelligence of Multiple Physicians vs Individual Physicians [J].
Barnett, Michael L. ;
Boddupalli, Dhruv ;
Nundy, Shantanu ;
Bates, David W. .
JAMA NETWORK OPEN, 2019, 2 (03) :e190096
[6]   A Unified Form of Fuzzy C-Means and K-Means algorithms and its Partitional Implementation [J].
Borlea, Ioan-Daniel ;
Precup, Radu-Emil ;
Borlea, Alexandra-Bianca ;
Iercan, Daniel .
KNOWLEDGE-BASED SYSTEMS, 2021, 214
[7]   Deep neural networks are superior to dermatologists in melanoma image classification [J].
Brinker, Titus J. ;
Hekler, Achim ;
Enk, Alexander H. ;
Berking, Carola ;
Haferkamp, Sebastian ;
Hauschild, Axel ;
Weichenthal, Michael ;
Klode, Joachim ;
Schadendorf, Dirk ;
Holland-Letz, Tim ;
von Kalle, Christof ;
Froehling, Stefan ;
Schilling, Bastian ;
Utikal, Jochen S. .
EUROPEAN JOURNAL OF CANCER, 2019, 119 :11-17
[8]   Deep learning outperformed 136 of 157 dermatologists in a head-to-head dermoscopic melanoma image classification task [J].
Brinker, Titus J. ;
Hekler, Achim ;
Enk, Alexander H. ;
Klode, Joachim ;
Hauschild, Axel ;
Berking, Carola ;
Schilling, Bastian ;
Haferkamp, Sebastian ;
Schadendorf, Dirk ;
Holland-Letz, Tim ;
Utikal, Jochen S. ;
von Kalle, Christof .
EUROPEAN JOURNAL OF CANCER, 2019, 113 :47-54
[9]   A convolutional neural network trained with dermoscopic images performed on par with 145 dermatologists in a clinical melanoma image classification task [J].
Brinker, Titus J. ;
Hekler, Achim ;
Enk, Alexander H. ;
Klode, Joachim ;
Hauschild, Axel ;
Berking, Carola ;
Schilling, Bastian ;
Haferkamp, Sebastian ;
Schadendorf, Dirk ;
Froehling, Stefan ;
Utikal, Jochen S. ;
von Kalle, Christof ;
Ludwig-Peitsch, Wiebke ;
Sirokay, Judith ;
Heinzerling, Lucie ;
Albrecht, Magarete ;
Baratella, Katharina ;
Bischof, Lena ;
Chorti, Eleftheria ;
Dith, Anna ;
Drusio, Christina ;
Giese, Nina ;
Gratsias, Emmanouil ;
Griewank, Klaus ;
Hallasch, Sandra ;
Hanhart, Zdenka ;
Herz, Saskia ;
Hohaus, Katja ;
Jansen, Philipp ;
Jockenhoefer, Finja ;
Kanaki, Theodora ;
Knispel, Sarah ;
Leonhard, Katja ;
Martaki, Anna ;
Matei, Liliana ;
Matull, Johanna ;
Olischewski, Alexandra ;
Petri, Maximilian ;
Placke, Jan-Malte ;
Raub, Simon ;
Salva, Katrin ;
Schlott, Swantje ;
Sody, Elsa ;
Steingrube, Nadine ;
Stoffels, Ingo ;
Ugurel, Selma ;
Sondermann, Wiebke ;
Zaremba, Anne ;
Gebhardt, Christoffer ;
Booken, Nina .
EUROPEAN JOURNAL OF CANCER, 2019, 111 :148-154
[10]   Comparing artificial intelligence algorithms to 157 German dermatologists: the melanoma classification benchmark [J].
Brinker, Titus J. ;
Hekler, Achim ;
Hauschild, Axel ;
Berking, Carola ;
Schilling, Bastian ;
Enk, Alexander H. ;
Haferkamp, Sebastian ;
Karoglan, Ante ;
von Kalle, Christof ;
Weichenthal, Michael ;
Sattler, Elke ;
Schadendorf, Dirk ;
Gaiser, Maria R. ;
Klode, Joachim ;
Utikal, Jochen S. .
EUROPEAN JOURNAL OF CANCER, 2019, 111 :30-37