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基于人机协同策略的病理切片制片质量缺陷检测

A human-in-the-loop strategy for defect detection in pathological slide production

  • 摘要: 组织病理切片制片质量直接关系到病理诊断的准确性,但传统依赖医生主观判读的质控方式存在效率低和客观性不足的问题。现有基于图像处理和深度学习的方法虽能部分提升自动化水平,但仍面临缺陷识别不全面、细粒度不足及算力依赖高等限制。针对上述问题,本文提出一种基于图像处理与人机协同深度学习策略的病理切片制片质量缺陷高效检测框架。该框架先利用图像处理实现高敏感性的缺陷初筛,再通过深度学习模型进行高特异性复核,同时引入主动学习机制,通过人工标注不确定样本并多轮微调模型以持续提升性能。实验表明,该框架在多类缺陷检测任务中的综合AUC达到0.985。该研究实现了病理切片质量的自动化、批量化和流程化控制,具备在远程数字病理质检和病理科数字化建设中的广泛应用价值。

     

    Abstract: The quality of histopathological slide preparation is crucial for diagnostic accuracy, yet conventional quality control methods relying on subjective evaluation by pathologists suffer from low efficiency and limited objectivity. Existing approaches based on image processing and deep learning have partially improved automation but still face challenges such as incomplete defect recognition, insufficient fine-grained detection and heavy computational demands. To address these issues, this study proposes an efficient defect detection framework that integrates image processing with a human-in-the-loop deep learning strategy. The framework first employs image processing for highly sensitive preliminary screening, followed by deep learning models for more specific secondary evaluation. In addition, an active human-in-the-loop mechanism is introduced, in which uncertain samples are annotated by experts and the model is iteratively fine-tuned to continuously enhance performance. Experimental results demonstrate that the proposed framework achieves an overall AUC of 0.985 across multiple defect types. This research enables automated, large-scale, and standardized quality control of histopathological slides, offering significant potential for remote digital pathology inspection and the digital transformation of pathology laboratories.

     

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