Measuring the Performance of an Artificial Intelligence-Based Robot That Classifies Blood Tubes and Performs Quality Control in Terms of Preanalytical Errors: a Preliminary Study

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Date

2024

Journal Title

Journal ISSN

Volume Title

Publisher

Oxford University Press

Open Access Color

Green Open Access

No

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No
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Average
Influence
Average
Popularity
Top 10%

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Abstract

Objectives: Artificial intelligence-based robotic systems are increasingly used in medical laboratories. This study aimed to test the performance of KANKA (Labenko), a stand-alone, artificial intelligence-based robot that performs sorting and preanalytical quality control of blood tubes. Methods: KANKA is designed to perform preanalytical quality control with respect to error control and preanalytical sorting of blood tubes. To detect sorting errors and preanalytical inappropriateness within the routine work of the laboratory, a total of 1000 blood tubes were presented to the KANKA robot in 7 scenarios. These scenarios encompassed various days and runs, with 5 repetitions each, resulting in a total of 5000 instances of sorting and detection of preanalytical errors. As the gold standard, 2 experts working in the same laboratory identified and recorded the correct sorting and preanalytical errors. The success rate of KANKA was calculated for both the accurate tubes and those tubes with inappropriate identification. Results: KANKA achieved an overall accuracy rate of 99.98% and 100% in detecting tubes with preanalytical errors. It was found that KANKA can perform the control and sorting of 311 blood tubes per hour in terms of preanalytical errors. Conclusions: KANKA categorizes and records problem-free tubes according to laboratory subunits while identifying and classifying tubes with preanalytical inappropriateness into the correct error sections. As a blood acceptance and tube sorting system, KANKA has the potential to save labor and enhance the quality of the preanalytical process. © 2024 The Author(s).

Description

Demirci, Ferhat/0000-0002-5999-3399; Bilge, Ugur/0000-0002-5186-1092; Basok, Banu Isbilen/0000-0002-1483-997X

Keywords

artificial intelligence, preanalytical phase, quality control, tube sorting, Quality Control, Blood Specimen Collection, Artificial Intelligence, Humans, Robotics

Fields of Science

03 medical and health sciences, 0302 clinical medicine

Citation

WoS Q

Q3

Scopus Q

Q1
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OpenCitations Citation Count
2

Source

American Journal of Clinical Pathology

Volume

161

Issue

6

Start Page

553

End Page

560
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Scopus : 4

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Mendeley Readers : 10

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4

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Web of Science™ Citations

3

checked on Apr 27, 2026

Page Views

232

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Downloads

3

checked on Apr 27, 2026

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