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Optimizing cervical cancer diagnosis with a hybrid deep neural network and progressive resizing on pap smear WSIs – Scientific Reports

  • Article
  • Open access
  • Published:
  • Nitin Kumar Chauhan1,
  • Amit Kumar2,
  • Ankit Jain1,
  • Krishna Singh3,
  • Dharmendra Kumar4,
  • Shashank Sheshar Singh5 &
  • Harish Kumar Shakya6 

Scientific Reports , Article number:  (2026) Cite this article

We are providing an unedited version of this manuscript to give early access to its findings. Before final publication, the manuscript will undergo further editing. Please note there may be errors present which affect the content, and all legal disclaimers apply.

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Abstract

Nowadays, computer-aided diagnostic (CAD) systems powered by artificial intelligence (AI) are becoming increasingly prevalent in cervical cancer diagnosis. Automatic selection of features by the deep convolutional neural networks (CNN) is a more prominent substitute than the conventional machine learning (ML) models, as they require handcrafted cell segmentation and extraction. Pre-trained deep models using transfer learning and fine-tuning make these models faster and more efficient, even with the limited data availability. This article proposes a novel hybrid deep network with progressive resizing (HDNPR) for classifying whole slide images (WSI) of pap smear slides. This model trains fine-tuned deep learning (DL) models on pre-trained weights utilizing progressively resized and augmented training data of size 224 × 224, 512 × 512, and 1024 × 1024 pixels, laid over with transfer learning. The hybrid deep features produced by the concatenation of extracted features from two prevalent fine-tuned deep learning networks, VGG-16 and ResNet-152, are applied to the fully connected network (FCN) stage for detecting different classes of cervical cancer. The proposed HDNPR network is evaluated for both multiclass and binary classification, and it is able to attain an accuracy score of 97.45% for 5-class classification and 98.58% for 2-class classification, respectively.

Abbreviations

CAD:

Computer-aided diagnostic

AI:

Artificial Intelligence

CNN:

Convolutional neural networks

ML:

Machine learning

HDNPR:

Hybrid deep networkwith progressive resizing

WSI:

Whole slide images

DL:

Deep learning

HPV:

Humanpapillomavirus

Mask-RCNN:

Mask-recurrent neural network

LFCCRF:

Local fullyconnected conditional random field

ATT-UNet:

Attention U-net

IR-Net:

Instance relationnetwork

FCNNs:

Fully convolutional neural networks

ELM:

Extreme learning machine

TCT:

ThinPrep cytologic test

DTCWT:

Dual-tree complex wavelet transform

SVM:

Support vector machine

FCN:

Fully connected network

CCD:

Charge-coupled device

SI:

Superficial-intermediate

P:

Parabasal

K:

Koilocytes

D:

Dyskeratotic

M:

Metaplastic

ANN:

Artificial neural network

GPU:

Graphics processing unit

Acknowledgements

The authors would like to acknowledge that language editing tools (Grammarly and QuillBot) were used to only assist with grammar and spelling refinement during the preparation of this manuscript.

Funding

Open access funding provided by Manipal University Jaipur. The authors received no specific funding for this study.

Author information

Authors and Affiliations

  1. Department of ECE, Indore Institute of Science & Technology, Indore, 453331, India

    Nitin Kumar Chauhan & Ankit Jain

  2. CNRS@CREATE, Singapore, Singapore

    Amit Kumar

  3. Formerly G. B. Pant Engineering College, DSEU Okhla Campus-I, New Delhi, 110020, India

    Krishna Singh

  4. Department of Electrical and Instrumentation Engineering, Thapar Institute of Engineering and Technology, Patiala, Punjab, 147004, India

    Dharmendra Kumar

  5. Department of Computer Science and Engineering, Faculty of Engineering and Technology, South Asian University, New Delhi, India

    Shashank Sheshar Singh

  6. Department of Artificial Intelligence & Machine Learning, School of Computer Science & Engineering, Manipal University Jaipur, Jaipur, India

    Harish Kumar Shakya

Authors

  1. Nitin Kumar Chauhan
  2. Amit Kumar
  3. Ankit Jain
  4. Krishna Singh
  5. Dharmendra Kumar
  6. Shashank Sheshar Singh
  7. Harish Kumar Shakya

Corresponding author

Correspondence to Harish Kumar Shakya.

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Competing interests

The authors declare no competing interests.

Ethical approval

This paper does not contain any studies with human participants or animals performed by any of the authors. It does not require ethical approval.

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Informed consent is not applicable for this study.

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This is not applicable to this research.

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Cite this article

Chauhan, N.K., Kumar, A., Jain, A. et al. Optimizing cervical cancer diagnosis with a hybrid deep neural network and progressive resizing on pap smear WSIs. Sci Rep (2026). https://doi.org/10.1038/s41598-026-49654-1

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  • DOI: https://doi.org/10.1038/s41598-026-49654-1

Keywords

colind88

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