|Table of Contents|

Evaluation of the effect of automatic detection model for lymphovascular infiltration inmultiple tumors

Journal Of Modern Oncology[ISSN:1672-4992/CN:61-1415/R]

Issue:
2023 19
Page:
3572-3577
Research Field:
Publishing date:

Info

Title:
Evaluation of the effect of automatic detection model for lymphovascular infiltration inmultiple tumors
Author(s):
WANG Chunbao1DING Caixia2LUO Ali3LI Hansheng4YANG Zhe1LIAN Jie1CUI Lei4ZHANG Guanjun1
1.Department of Pathology,the First Affiliated Hospital of Xi'an Jiaotong University,Shaanxi Xi'an 710061,China;2.Department of Pathology,Shaanxi Provincial Tumor Hospital,Shaanxi Xi'an 710061,China;3.Department of Pathology,Xi'an Chest Hospital,Shaanxi Xi'an 710100,China;4.School of Information Science and Technology,Northwest University,Shaanxi Xi'an 710100,China.
Keywords:
pathologycancerlymphovascular infiltrationAlgorithmartificia lintelligence
PACS:
R733.4
DOI:
10.3969/j.issn.1672-4992.2023.19.007
Abstract:
Objective:To test and analyze the detection effect and generalization ability of the global library(GLB) target detection model of lymphovascular infiltration(LVI).Methods:131 cases of LVI positive and negative from the Department of Pathology of the First Affiliated Hospital of Xi'an Jiaotong University were randomly selected.All slides were stained with HE and D2-40 immunohistochemistry.The experimental group includes three groups:pathologists' manual reading group,algorithm group and algorithm assisted pathologists.The LVI results and detection time of the three groups were counted respectively.Results:The comparison of the consistency among pathologists,pure algorithm and algorithm assisted pathologists showed that in 131 cases,the consistency Kappa values under the three modes were good(0.709,0.786,0.796),slight(0.208) and moderate(0.412),respectively.The most common reason for pathologists' errors is missed diagnosis(n=8),and the second is due to IHC staining problems(including 6 cases of insufficient staining,while 3 cases of significant non staining).The rest included 2 tissue fissures,1 small vein(D2-40 not stained),and 3 unknown causes.On the one hand,the reason for the error of pure algorithm judgment is due to pathological section or staining technology,such as free small tissues(15/63),non-specific or insufficient staining(14/63),bubbles(8/63),etc.On the other hand,the similarity between the tissue morphology of some LVIs and the detection targets leads to algorithm misjudgment,such as glands(14/63),blood vessels(13/63),and peripheral small nerves(5/63).The time spent in the three modes is 59.28 s,82.40 s and 10.43 s respectively.Conclusion:Although our results confirm the ability of algorithm assisted pathological diagnosis to improve diagnostic efficiency,the implementation of algorithm assisted diagnosis should fully consider the quality control of pathological slides and the necessity of developing multi-level design,and try to accumulate large data to cover multiple target analogues.

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Memo

Memo:
陕西省肿瘤医院2022年院内国家自然科学基金孵育项目(编号:SC222710)
Last Update: 2023-08-31