Qbot

DICOM Diagnostics

Data mining software suit for clinical routine and research in radiology and nuclear medicine.

Qbot features advanced-level analysis of workflow logistics, radiopharmaceutical usage, protocol compliance, dose management and complex study selection for high-end research. It was developed based on solid multidisciplinary knowledge of physicians, pysicists and technologists at ScanoMed Ltd.

QBotdicom
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Synchron

Fully automated syncronization between the Qbot database and PACS servers

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explorer

Structured visualization of PACS contents

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Assurance

SOP compliance and non-conformity management

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Filter

Data mining and retrospective study selection

Why Qbot

For Whom

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Synchron

Fully automated syncronization between the Qbot database and PACS servers:

icon_1

Explorer

Structured visualization of PACS contents

icon_2

Assurance

SOP compliance and non-conformity management

icon_4

Filter

Data mining and retrospective study selection

Extra Services

Site analysis
using Qbot:

Advanced configuration
of Qbot:

Advanced search
on studies using Qbot:

contact us

QBotdicom

References

QBotdicom

Q-Bot: automatic DICOM metadata monitoring for the next level of quality management in nuclear medicine

Nagy F, Krizsan AK, Kukuts K, Szolikova M, Hascsi Z, Barna S, Acs A, Szabo P, Tron L, Balkay L, Dahlbom M, Zentai M, Forgacs A, Garai I. EJNMMI Phys. 2021 Mar 18; 8(1):28. DOI: 10.1186/s40658-021-00371-w.

QBotdicom

Experiences from the technologist point of view: automatic nuclear medicine DICOM image observer tool for quality management

M. Szoliková, Ferenc Nagy, Áron K. Krizsán, Kornél Kukuts, Sándor Barna, Zsolt Hascsi, Ildikó Garai, Attila Forgács oral presentation at EANM 2019 conference, Barcelona.

Robustness analysis of denoising neural networks for bone scintigraphy

A Kovacs, T Bukki, G Legradi, NJ Meszaros, GZ Kovacs, P Prajcer, I Tamaga, Z Seress, G Kiszler. Nuclear Instruments and Methods in Physics Research Section A 2022; 1039(1):167003
DOI: 10.1016/j.nima.2022.167003.

 

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