Significant reduction in manual annotation costs in ultrasound medical image database construction through step by step artificial intelligence pre-annotation.

Journal: PLOS digital health
Published Date:

Abstract

This study investigates the feasibility of reducing manual image annotation costs in medical image database construction by utilizing a step by step approach where the Artificial Intelligence model (AI model) trained on a previous batch of data automatically pre-annotates the next batch of image data, taking ultrasound image of thyroid nodule annotation as an example. The study used YOLOv8 as the AI model. During the AI model training, in addition to conventional image augmentation techniques, augmentation methods specifically tailored for ultrasound images were employed to balance the quantity differences between thyroid nodule classes and enhance model training effectiveness. The study found that training the model with augmented data significantly outperformed training with raw images data. When the number of original images number was only 1,360, with 7 thyroid nodule classifications, pre-annotation using the AI model trained on augmented data could save at least 30% of the manual annotation workload for junior physicians. When the scale of original images number reached 6,800, the classification accuracy of the AI model trained on augmented data was very close with that of junior physicians, eliminating the need for manual preliminary annotation.

Authors

  • Fu Zheng
    The Ultrasound Diagnosis Department, The 906th Hospital of Joint Logistics Support Force of PLA, Ningbo City, Zhejiang Province, China.
  • Liu XingMing
    The Ultrasound Diagnosis Department, The 906th Hospital of Joint Logistics Support Force of PLA, Ningbo City, Zhejiang Province, China.
  • Xu JuYing
    The Ultrasound Diagnosis Department, The 906th Hospital of Joint Logistics Support Force of PLA, Ningbo City, Zhejiang Province, China.
  • Tao MengYing
    The Ultrasound Diagnosis Department, The 906th Hospital of Joint Logistics Support Force of PLA, Ningbo City, Zhejiang Province, China.
  • Yang BaoJian
    The Ultrasound Diagnosis Department, The 906th Hospital of Joint Logistics Support Force of PLA, Ningbo City, Zhejiang Province, China.
  • Shan Yan
    Huamu Community Health Service Center, Shanghai 201204, P.R. China.
  • Ye KeWei
    The Ultrasound Diagnosis Department, The 906th Hospital of Joint Logistics Support Force of PLA, Ningbo City, Zhejiang Province, China.
  • Lu ZhiKai
    The Ultrasound Diagnosis Department, The 906th Hospital of Joint Logistics Support Force of PLA, Ningbo City, Zhejiang Province, China.
  • Huang Cheng
    The Ultrasound Diagnosis Department, The 906th Hospital of Joint Logistics Support Force of PLA, Ningbo City, Zhejiang Province, China.
  • Qi KeLan
    The Ultrasound Diagnosis Department, The 906th Hospital of Joint Logistics Support Force of PLA, Ningbo City, Zhejiang Province, China.
  • Chen XiHao
    The Ultrasound Diagnosis Department, The 906th Hospital of Joint Logistics Support Force of PLA, Ningbo City, Zhejiang Province, China.
  • Du WenFei
    The Ultrasound Diagnosis Department, The 906th Hospital of Joint Logistics Support Force of PLA, Ningbo City, Zhejiang Province, China.
  • He Ping
    The Ultrasound Diagnosis Department, The 906th Hospital of Joint Logistics Support Force of PLA, Ningbo City, Zhejiang Province, China.
  • Wang RunYu
    State Power Investment Corporation, Ningbo City, Zhejiang Province, China.
  • Ying Ying
    Virtual Simulation and Artificial Intelligence Committee, Chinese Association for Physiological Sciences.
  • Bu XiaoHui
    The Ultrasound Diagnosis Department, Hangzhou Special Service Sanatorium of the PLA Air Force, Hangzhou City, Zhejiang Province, China.

Keywords

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