AI Article Synopsis

  • The study focuses on improving the differentiation of primary aldosterone (PA) subtypes through adrenal venous sampling (AVS) by utilizing CT radiomics and clinicobiochemical features.
  • A total of 158 PA patients were analyzed using machine learning models that classified PA types and determined the affected side, with the best model combining CT and clinical data showing high accuracy.
  • Results indicated that the predictive model outperformed traditional radiologist evaluations, demonstrating significant potential in enhancing PA subtype diagnosis and lateralization.

Article Abstract

Rationale And Objectives: Adrenal venous sampling (AVS) is the primary method for differentiating between primary aldosterone (PA) subtypes. The aim of study is to develop prediction models for subtyping of patients with PA using computed tomography (CT) radiomics and clinicobiochemical characteristics associated with PA.

Materials And Methods: This study retrospectively enrolled 158 patients with PA who underwent AVS between January 2014 and March 2021. Neural network machine learning models were developed using a two-stage analysis of triple-phase abdominal CT and clinicobiochemical characteristics. In the first stage, the models were constructed to classify unilateral or bilateral PA; in the second stage, they were designed to determine the predominant side in patients with unilateral PA. The final proposed model combined the best-performing models from both stages. The model's performance was evaluated using repeated stratified five-fold cross-validation. We employed paired t-tests to compare its performance with the conventional imaging evaluations made by radiologists, which categorize patients as either having bilateral PA or unilateral PA on one side.

Results: In the first stage, the integrated model that combines CT radiomic and clinicobiochemical characteristics exhibited the highest performance, surpassing both the radiomic-alone and clinicobiochemical-alone models. It achieved an accuracy and F1 score of 80.6% ± 3.0% and 74.8% ± 5.2% (area under the receiver operating curve [AUC] = 0.778 ± 0.050). In the second stage, the accuracy and F1 score of the radiomic-based model were 88% ± 4.9% and 81.9% ± 6.2% (AUC=0.831 ± 0.087). The proposed model achieved an accuracy and F1 score of 77.5% ± 3.9% and 70.5% ± 7.1% (AUC=0.771 ± 0.046) in subtype diagnosis and lateralization, surpassing the accuracy and F1 score achieved by radiologists' evaluation (p < .05).

Conclusion: The proposed machine learning model can predict the subtypes and lateralization of PA. It yields superior results compared to conventional imaging evaluation and has potential to supplement the diagnostic process in PA.

Download full-text PDF

Source
http://dx.doi.org/10.1016/j.acra.2023.10.015DOI Listing

Publication Analysis

Top Keywords

clinicobiochemical characteristics
16
accuracy score
16
machine learning
8
computed tomography
8
tomography radiomics
8
radiomics clinicobiochemical
8
second stage
8
proposed model
8
achieved accuracy
8
model
5

Similar Publications

Objective: To evaluate the clinical, radiological, and biochemical features of glutaric aciduria Type 1 (GA1) patients identified through urine organic acid testing at a biochemical genetics laboratory (BGL) in Pakistan.

Study Design: Observational study. Place and Duration of the Study: Department of Pathology and Laboratory Medicine, The Aga Khan University Hospital, Karachi, Pakistan, from January 2013 to December 2022.

View Article and Find Full Text PDF

Purpose: Baseline renal dysfunction predicts mortality in primary hyperparathyroidism (PHPT). However, it remains controversial whether renal insufficiency in PHPT is due to disease severity alone or other risk factors. This study aimed to explore the association of clinico-biochemical variables with renal dysfunction [estimated glomerular filtration rate (eGFR) < 60 ml/min/m] in PHPT.

View Article and Find Full Text PDF
Article Synopsis
  • The study focuses on improving the differentiation of primary aldosterone (PA) subtypes through adrenal venous sampling (AVS) by utilizing CT radiomics and clinicobiochemical features.
  • A total of 158 PA patients were analyzed using machine learning models that classified PA types and determined the affected side, with the best model combining CT and clinical data showing high accuracy.
  • Results indicated that the predictive model outperformed traditional radiologist evaluations, demonstrating significant potential in enhancing PA subtype diagnosis and lateralization.
View Article and Find Full Text PDF

Polycystic ovary syndrome (PCOS) has significant metabolic sequelae linked to insulin resistance. This study aimed to compare clinical, metabolic, and hormonal characteristics of PCOS women with and without insulin resistance. The second aim was to compare the clinico-biochemical profiles of the various PCOS phenotypes.

View Article and Find Full Text PDF

Cardiometabolic syndrome (MetS) is closely linked to type 2 diabetes mellitus (T2DM) and is the leading cause of diabetes complications. Anthropometric indices could be used as a cheap approach to identify MetS among T2DM patients. We determined the prevalence of MetS and its association with sociodemographic and anthropometric indices among T2DM patients in a tertiary hospital in the Ashanti region of Ghana.

View Article and Find Full Text PDF

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!