Literature DB >> 30207981

Machine learning for intraoperative prediction of viability in ischemic small intestine.

Runar J Strand-Amundsen1, Christian Tronstad, Henrik M Reims, Finn P Reinholt, Jan O Høgetveit, Tor I Tønnessen.   

Abstract

OBJECTIVE: Evaluation of intestinal viability is essential in surgical decision-making in patients with acute intestinal ischemia. There has been no substantial change in the mortality rate (30%-93%) of patients with acute mesenteric ischemia (AMI) since the 1980s. As the accuracy from the first laparotomy alone is 50%, the gold standard is a second-look laparotomy, increasing the accuracy to 87%-89%. This study investigates the use of machine learning to classify intestinal viability and histological grading in pig jejunum, based on multivariate time-series of bioimpedance sensor data. APPROACH: We have previously used a bioimpedance sensor system to acquire electrical parameters from perfused, ischemic and reperfused pig jejunum (7  +  15 pigs) over 1-16 h of ischemia and 1-8 h of reperfusion following selected durations of ischemia. In this study we compare the accuracy of using end-point bioimpedance measurements with a feedforward neural network (FNN), versus the accuracy when using a recurrent neural network with long short-term memory units (LSTM-RNN) with bioimpedance data history over different periods of time. MAIN
RESULTS: Accuracies in the range of what has been reported clinically can be achieved using FNN's on a single bioimpedance measurement, and higher accuracies can be achieved when employing LSTM-RNN on a sequence of data history. SIGNIFICANCE: Intraoperative bioimpedance measurements on intestine of suspect viability combined with machine learning can increase the accuracy of intraoperative assessment of intestinal viability. Increased accuracy in intraoperative assessment of intestinal viability has the potential to reduce the high mortality and morbidity rate of the patients.

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Year:  2018        PMID: 30207981     DOI: 10.1088/1361-6579/aae0ea

Source DB:  PubMed          Journal:  Physiol Meas        ISSN: 0967-3334            Impact factor:   2.833


  5 in total

1.  Electrical Impedance Characterization of in Vivo Porcine Tissue Using Machine Learning.

Authors:  Stephen Chiang; Matthew Eschbach; Robert Knapp; Brian Holden; Andrew Miesse; Steven Schwaitzberg; Albert Titus
Journal:  J Electr Bioimpedance       Date:  2021-07-02

2.  Possibilities in the Application of Machine Learning on Bioimpedance Time-series.

Authors:  Christian Tronstad; Runar Strand-Amundsen
Journal:  J Electr Bioimpedance       Date:  2019-07-02

3.  Machine Learning for Stem Cell Differentiation and Proliferation Classification on Electrical Impedance Spectroscopy.

Authors:  André B Cunha; Jie Hou; Christin Schuelke
Journal:  J Electr Bioimpedance       Date:  2019-12-31

4.  Small intestinal viability assessment using dielectric relaxation spectroscopy and deep learning.

Authors:  Jie Hou; Runar Strand-Amundsen; Christian Tronstad; Tor Inge Tønnessen; Jan Olav Høgetveit; Ørjan Grøttem Martinsen
Journal:  Sci Rep       Date:  2022-02-28       Impact factor: 4.379

Review 5.  Artificial intelligence in small intestinal diseases: Application and prospects.

Authors:  Yu Yang; Yu-Xuan Li; Ren-Qi Yao; Xiao-Hui Du; Chao Ren
Journal:  World J Gastroenterol       Date:  2021-07-07       Impact factor: 5.742

  5 in total

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