| Literature DB >> 35054180 |
Prasanalakshmi Balaji1, Kumarappan Chidambaram2.
Abstract
One of the most dangerous diseases that threaten people is cancer. If diagnosed in earlier stages, cancer, with its life-threatening consequences, has the possibility of eradication. In addition, accuracy in prediction plays a significant role. Hence, developing a reliable model that contributes much towards the medical community in the early diagnosis of biopsy images with perfect accuracy comes to the forefront. This article aims to develop better predictive models using multivariate data and high-resolution diagnostic tools in clinical cancer research. This paper proposes the social spider optimisation (SSO) algorithm-tuned neural network to classify microscopic biopsy images of cancer. The significance of the proposed model relies on the effective tuning of the weights of the neural network classifier by the SSO algorithm. The performance of the proposed strategy is analysed with performance metrics such as accuracy, sensitivity, specificity, and MCC measures, and the attained results are 95.9181%, 94.2515%, 97.125%, and 97.68%, respectively, which shows the effectiveness of the proposed method for cancer disease diagnosis.Entities:
Keywords: biopsy; cancer diagnosis; neural network; optimisation; predictive models
Year: 2021 PMID: 35054180 PMCID: PMC8774371 DOI: 10.3390/diagnostics12010011
Source DB: PubMed Journal: Diagnostics (Basel) ISSN: 2075-4418
Figure 1Sample Biopsy images.
Figure 2Schematic diagram of the proposed cancer disease diagnosis model.
Figure 3Structure of the proposed SSO-ANN.
Figure 4Performance comparison of models.
Figure 5MCC, sensitivity, specificity vs threshold.
Figure 6(a–d) Performance analysis of the proposed method.