AI Article Synopsis

  • Ventricular shunts are the primary treatment for adult hydrocephalus, but diagnosing shunt malfunctions can be tricky; computer vision algorithms might help automate this process.
  • A feasibility study involved 191 adult hydrocephalus patients and their CT scans, where a machine learning algorithm was trained to identify brain ventricle sizes.
  • The algorithm showed a high performance (average Dice score of 0.809) and accurately predicted shunt revisions in 92.3% of cases, indicating its potential reliability in clinical settings.

Article Abstract

While ventricular shunts are the main treatment for adult hydrocephalus, shunt malfunction remains a common problem that can be challenging to diagnose. Computer vision-derived algorithms present a potential solution. We designed a feasibility study to see if such an algorithm could automatically predict ventriculomegaly indicative of shunt failure in a real-life adult hydrocephalus population. We retrospectively identified a consecutive series of adult shunted hydrocephalus patients over an eight-year period. Associated computed tomography scans were extracted and each scan was reviewed by two investigators. A machine learning algorithm was trained to identify the lateral and third ventricles, and then applied to test scans. Results were compared to human performance using Sørensen-Dice coefficients, calculated total ventricular volumes, and ventriculomegaly as documented in the electronic medical record. 5610 axial images from 191 patients were included for final analysis, with 52 segments (13.6% of total data) reserved for testing. Algorithmic performance on the test group averaged a Dice score of 0.809 ± 0.094. Calculated total ventricular volumes did not differ significantly between computer-derived volumes and volumes marked by either the first reviewer or second reviewer (p > 0.05). Algorithm detection of ventriculomegaly was correct in all test cases and this correlated with correct prediction of need for shunt revision in 92.3% of test cases. Though development challenges remain, it is feasible to create automated algorithms that detect ventriculomegaly in adult hydrocephalus shunt malfunction with high reliability and accuracy.

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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11436930PMC
http://dx.doi.org/10.1038/s41598-024-73167-4DOI Listing

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