CT-Based Radiomic Analysis May Predict Bacteriological Features of Infected Intraperitoneal Fluid Collections after Gastric Cancer Surgery.
Vlad Radu PuiaRoxana Adelina LupeanPaul-Andrei ȘtefanAlin Cornel FettiDan VăleanFlorin Vasile ZaharieIoana RusuLidia CiobanuNadim Al-HajjarPublished in: Healthcare (Basel, Switzerland) (2022)
The ability of texture analysis (TA) features to discriminate between different types of infected fluid collections, as seen on computed tomography (CT) images, has never been investigated. The study comprised forty patients who had pathological post-operative fluid collections following gastric cancer surgery and underwent CT scans. Patients were separated into six groups based on advanced microbiological analysis of the fluid: mono bacterial ( n = 16)/multiple-bacterial ( n = 24)/fungal ( n = 14)/non-fungal ( n = 26) infection and drug susceptibility tests into: multiple drug-resistance bacteria ( n = 23) and non-resistant bacteria ( n = 17). Dedicated software was used to extract the collections' TA parameters. The parameters obtained were used to compare fungal and non-fungal infections, mono-bacterial and multiple-bacterial infections, and multiresistant and non-resistant infections. Univariate and receiver operating characteristic analyses and the calculation of sensitivity (Se) and specificity (Sp) were used to identify the best-suited parameters for distinguishing between the selected groups. TA parameters were able to differentiate between fungal and non-fungal collections (ATeta3, p = 0.02; 55% Se, 100% Sp), mono and multiple-bacterial (CN2D6AngScMom, p = 0.03); 80% Se, 64.29% Sp) and between multiresistant and non-multiresistant collections (CN2D6Contrast, p = 0.04; 100% Se, 50% Sp). CT-based TA can statistically differentiate between different types of infected fluid collections. However, it is unclear which of the fluids' micro or macroscopic features are reflected by the texture parameters. In addition, this cohort is used as a training cohort for the imaging algorithm, with further validation cohorts being required to confirm the changes detected by the algorithm.
Keyphrases
- contrast enhanced
- computed tomography
- dual energy
- image quality
- magnetic resonance imaging
- positron emission tomography
- minimally invasive
- magnetic resonance
- deep learning
- machine learning
- end stage renal disease
- cell wall
- lymph node metastasis
- chronic kidney disease
- ejection fraction
- prognostic factors
- oxidative stress
- emergency department
- coronary artery disease
- mass spectrometry
- squamous cell carcinoma
- optical coherence tomography
- patient reported outcomes
- peritoneal dialysis
- acute coronary syndrome
- surgical site infection
- electronic health record
- drug induced
- pet ct
- neural network