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Convolutional neural network application for automated lung cancer detection on chest CT using Google AI Studio.

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Radiography (London, England : 1995) 2025 Vol.31 Suppl 2() p. 103152
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출처

Aljneibi Z, Almenhali S, Lanca L

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[INTRODUCTION] This study aimed to evaluate the diagnostic performance of an artificial intelligence (AI)-enhanced model for detecting lung cancer on computed tomography (CT) images of the chest.

🔬 핵심 임상 통계 (초록에서 자동 추출 — 원문 검증 권장)
  • 95% CI 0.745-0.897
  • Sensitivity 74.5 %
  • Specificity 76.4 %

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BibTeX ↓ RIS ↓
APA Aljneibi Z, Almenhali S, Lanca L (2025). Convolutional neural network application for automated lung cancer detection on chest CT using Google AI Studio.. Radiography (London, England : 1995), 31 Suppl 2, 103152. https://doi.org/10.1016/j.radi.2025.103152
MLA Aljneibi Z, et al.. "Convolutional neural network application for automated lung cancer detection on chest CT using Google AI Studio.." Radiography (London, England : 1995), vol. 31 Suppl 2, 2025, pp. 103152.
PMID 40903384

Abstract

[INTRODUCTION] This study aimed to evaluate the diagnostic performance of an artificial intelligence (AI)-enhanced model for detecting lung cancer on computed tomography (CT) images of the chest. It assessed diagnostic accuracy, sensitivity, specificity, and interpretative consistency across normal, benign, and malignant cases.

[METHODS] An exploratory analysis was performed using the publicly available IQ-OTH/NCCD dataset, comprising 110 CT cases (55 normal, 15 benign, 40 malignant). A pre-trained convolutional neural network in Google AI Studio was fine-tuned using 25 training images and tested on a separate image from each case. Quantitative evaluation of diagnostic accuracy and qualitative content analysis of AI-generated reports was conducted to assess diagnostic patterns and interpretative behavior.

[RESULTS] The AI model achieved an overall accuracy of 75.5 %, with a sensitivity of 74.5 % and specificity of 76.4 %. The area under the ROC curve (AUC) for all cases was 0.824 (95 % CI: 0.745-0.897), indicating strong discriminative power. Malignant cases had the highest classification performance (AUC = 0.902), while benign cases were more challenging to classify (AUC = 0.615). Qualitative analysis showed the AI used consistent radiological terminology, but demonstrated oversensitivity to ground-glass opacities, contributing to false positives in non-malignant cases.

[CONCLUSION] The AI model showed promising diagnostic potential, particularly in identifying malignancies. However, specificity limitations and interpretative errors in benign and normal cases underscore the need for human oversight and continued model refinement.

[IMPLICATIONS FOR PRACTICE] AI-enhanced CT interpretation can improve efficiency in high-volume settings but should serve as a decision-support tool rather than a replacement for expert image review.

MeSH Terms

Humans; Lung Neoplasms; Tomography, X-Ray Computed; Neural Networks, Computer; Sensitivity and Specificity; Artificial Intelligence; Radiographic Image Interpretation, Computer-Assisted; Radiography, Thoracic; Lung; Convolutional Neural Networks

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