Automated Precision Localization of Peripherally Inserted Central
Catheter Tip through Model-Agnostic Multi-Stage Networks
- URL: http://arxiv.org/abs/2206.06730v1
- Date: Tue, 14 Jun 2022 10:26:47 GMT
- Title: Automated Precision Localization of Peripherally Inserted Central
Catheter Tip through Model-Agnostic Multi-Stage Networks
- Authors: Subin Park, Yoon Ki Cha, Soyoung Park, Kyung-Su Kim, Myung Jin Chung
- Abstract summary: Peripherally inserted central catheters (PICCs) have been widely used as one of the representative central venous lines (CVCs) due to their long-term intravascular access with low infectivity.
PICCs have a fatal drawback of a high frequency of tip mispositions, increasing the risk of puncture, embolism, and complications such as cardiac arrhythmias.
Various attempts have been made by using the latest deep learning (DL) technologies to automatically and precisely detect it.
This study aimed to develop a system generally applied to existing models and to restore the PICC line more exactly by removing the
- Score: 3.5255361096618523
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Peripherally inserted central catheters (PICCs) have been widely used as one
of the representative central venous lines (CVCs) due to their long-term
intravascular access with low infectivity. However, PICCs have a fatal drawback
of a high frequency of tip mispositions, increasing the risk of puncture,
embolism, and complications such as cardiac arrhythmias. To automatically and
precisely detect it, various attempts have been made by using the latest deep
learning (DL) technologies. However, even with these approaches, it is still
practically difficult to determine the tip location because the multiple
fragments phenomenon (MFP) occurs in the process of predicting and extracting
the PICC line required before predicting the tip. This study aimed to develop a
system generally applied to existing models and to restore the PICC line more
exactly by removing the MFs of the model output, thereby precisely localizing
the actual tip position for detecting its disposition. To achieve this, we
proposed a multi-stage DL-based framework post-processing the PICC line
extraction result of the existing technology. The performance was compared by
each root mean squared error (RMSE) and MFP incidence rate according to whether
or not MFCN is applied to five conventional models. In internal validation,
when MFCN was applied to the existing single model, MFP was improved by an
average of 45%. The RMSE was improved by over 63% from an average of 26.85mm
(17.16 to 35.80mm) to 9.72mm (9.37 to 10.98mm). In external validation, when
MFCN was applied, the MFP incidence rate decreased by an average of 32% and the
RMSE decreased by an average of 65\%. Therefore, by applying the proposed MFCN,
we observed the significant/consistent detection performance improvement of
PICC tip location compared to the existing model.
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