Firefly-SVM predictive model for breast cancer subgroup classification with clinicopathological parameters

被引:3
|
作者
Sarkar, Suvobrata [1 ,3 ]
Mali, Kalyani [2 ]
机构
[1] Dr BC Roy Engn Coll, Dept Comp Sci & Engn, Durgapur, West Bengal, India
[2] Univ Kalyani, Dept Comp Sci & Engn, Kalyani, West Bengal, India
[3] Dr BC Roy Engn Coll, Dept Comp Sci & Engn, Durgapur 713206, West Bengal, India
来源
DIGITAL HEALTH | 2023年 / 9卷
关键词
Firefly algorithm; support vector machine; predictive model; classification; clinicopathological parameters; triple-negative breast cancer; SUPPORT VECTOR MACHINE; COMPUTER-AIDED DIAGNOSIS; ALGORITHM; OPTIMIZATION; ULTRASOUND; TUMOR; REGRESSION; FEATURES; SUBTYPES; MASSES;
D O I
10.1177/20552076231207203
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
BackgroundBreast cancer is a highly predominant destructive disease among women characterised with varied tumour biology, molecular subgroups and diverse clinicopathological specifications. The potentiality of machine learning to transform complex medical data into meaningful knowledge has led to its application in breast cancer detection and prognostic evaluation.ObjectiveThe emergence of data-driven diagnostic model for assisting clinicians in diagnostic decision making has gained an increasing curiosity in breast cancer identification and analysis. This motivated us to develop a breast cancer data-driven model for subtype classification more accurately.MethodIn this article, we proposed a firefly-support vector machine (SVM) breast cancer predictive model that uses clinicopathological and demographic data gathered from various tertiary care cancer hospitals or oncological centres to distinguish between patients with triple-negative breast cancer (TNBC) and non-triple-negative breast cancer (non-TNBC).ResultsThe results of the firefly-support vector machine (firefly-SVM) predictive model were distinguished from the traditional grid search-support vector machine (Grid-SVM) model, particle swarm optimisation-support vector machine (PSO-SVM) and genetic algorithm-support vector machine (GA-SVM) hybrid models through hyperparameter tuning. The findings show that the recommended firefly-SVM classification model outperformed other existing models in terms of prediction accuracy (93.4%, 86.6%, 69.6%) for automated SVM parameter selection. The effectiveness of the prediction model was also evaluated using well-known metrics, such as the F1-score, mean square error, area under the ROC curve, logarithmic loss and precision-recall curve.ConclusionFirefly-SVM predictive model may be treated as an alternate tool for breast cancer subgroup classification that would benefit the clinicians for managing the patient with proper treatment and diagnostic outcome.
引用
收藏
页数:20
相关论文
共 50 条
  • [31] A Novel Model for Breast Cancer Detection and Classification
    Behar, Nishant
    Shrivastava, Manish
    ENGINEERING TECHNOLOGY & APPLIED SCIENCE RESEARCH, 2022, 12 (06) : 9496 - 9502
  • [32] Optimal Trained Deep Learning Model for Breast Cancer Segmentation and Classification
    Krishnakumar, B.
    Kousalya, K.
    INFORMATION TECHNOLOGY AND CONTROL, 2023, 52 (04): : 915 - 934
  • [33] Towards an Accurate Breast Cancer Classification Model based on Ensemble Learning
    Hesham, Aya
    El-Rashidy, Nora
    Rezk, Amira
    Hikal, Noha A.
    INTERNATIONAL JOURNAL OF ADVANCED COMPUTER SCIENCE AND APPLICATIONS, 2022, 13 (12) : 590 - 602
  • [34] Mixture classification model based on clinical markers for breast cancer prognosis
    Zeng, Tao
    Liu, Juan
    ARTIFICIAL INTELLIGENCE IN MEDICINE, 2010, 48 (2-3) : 129 - 137
  • [35] Core classification of lung cancer: Correlating nuclear size and mitoses with ploidy and clinicopathological parameters
    Petersen, Iver
    Kotb, Waleed F. M. Amin
    Friedrich, Karl-Heinz
    Schluens, Karsten
    Boecking, Alfred
    Dietel, Manfred
    LUNG CANCER, 2009, 65 (03) : 312 - 318
  • [36] Correlation between SFRP1 expression and clinicopathological parameters in patients with triple-negative breast cancer
    Schaefer, Sarah Alexandra
    Huelsewig, Carolin
    Barth, Peter
    von Wahlde, Marie-Kristin
    Tio, Joke
    Kolberg, Hans-Christian
    Bernemann, Christof
    Blohmer, Jens-Uwe
    Kiesel, Ludwig
    Kolberg-Liedtke, Cornelia
    FUTURE ONCOLOGY, 2019, 15 (16) : 1921 - 1938
  • [37] Robust predictive model for evaluating breast cancer survivability
    Park, Kanghee
    Ali, Amna
    Kim, Dokyoon
    An, Yeolwoo
    Kim, Minkoo
    Shin, Hyunjung
    ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, 2013, 26 (09) : 2194 - 2205
  • [38] A Modified Two-Stage SVM-RFE Model for Cancer Classification Using Microarray Data
    Tan, Phit Ling
    Tan, Shing Chiang
    Lim, Chee Peng
    Khor, Swee Eng
    NEURAL INFORMATION PROCESSING, PT I, 2011, 7062 : 668 - +
  • [39] Breast Cancer Subtypes and Prognosis: Answers to Subgroup Classification Questions, Identifying the Worst Subgroup in Our Single-Center Series
    Cosar, Rusen
    Sut, Necdet
    Ozen, Alaattin
    Tastekin, Ebru
    Topaloglu, Sernaz
    Cicin, Irfan
    Nurlu, Dilek
    Ozler, Talar
    Demir, Seda
    Yildiz, Gokay
    Senodeyici, Eylul
    Uzal, Mustafa Cem
    BREAST CANCER-TARGETS AND THERAPY, 2022, 14 : 259 - 280
  • [40] Classification of gene expression patterns using a novel type-2 fuzzy multigranulation-based SVM model for the recognition of cancer mediating biomarkers
    Ghosh, Swarup Kr
    Ghosh, Anupam
    NEURAL COMPUTING & APPLICATIONS, 2021, 33 (09): : 4263 - 4281