Toward a Next-Generation Digital Chest Tube

Author:

DeArmond Daniel T.1ORCID,Holt Lucas M.2,Wang Andrew P.2,Errico Kristen N.1,Das Nitin A.1

Affiliation:

1. Department of Cardiothoracic Surgery, Division of Thoracic Surgery, University of Texas Health Science Center at San Antonio, San Antonio, TX, USA

2. Department of Electrical and Computer Engineering, University of Texas at Austin, Austin, TX, USA

Abstract

Chest tubes in patients who have undergone pulmonary resection with pleural air leak are painful, impair ventilatory mechanics, and increase hospital length of stay and costs. Despite these well-documented concerns, current protocols for chest tube management in this setting are not well supported by evidence. Excessive suction applied to chest tubes has been associated with prolonged air leak due to alveolar over-distension, and most practitioners intuit that suction should be minimized to the lowest level needed to maintain desired pleural apposition. Unfortunately, there is no evidence-based protocol for the establishment of minimal adequate suction. Digital suction devices in current clinical use can identify air leak resolution preventing the delay of chest tube removal but cannot guide suction minimization while an air leak persists. We recently described a monitor of lung expansion in a porcine model of pleural air leak that could detect loss of pleural apposition continuously in real-time based on electrical impedance readings obtained directly from the surface of the lung via chest tube-embedded electrodes. The value of the impedance signal was “in-range” when pleural apposition was present but became abruptly “out-of-range” when pneumothorax due to inadequate suction developed. These findings suggested that a digitally controlled suction pump system could be programmed to recognize the development of pneumothorax and automatically identify and set the minimum level of suction required to maintain pleural apposition. We present here preliminary proof of concept for this system.

Funder

University of Texas Health Science Center at San Antonio

Publisher

SAGE Publications

Subject

Surgery

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