Literature DB >> 33675380

Application of a machine learning approach to characterization of liver function using 99mTc-GSA SPECT/CT.

Masatoyo Nakajo1, Megumi Jinguji2, Atsushi Tani2, Daisuke Hirahara3, Hiroaki Nagano2, Koji Takumi2, Takashi Yoshiura2.   

Abstract

PURPOSE: To assess the utility of a machine-learning approach for predicting liver function based on technetium-99 m-galactosyl serum albumin (99mTc-GSA) single photon emission computed tomography (SPECT)/CT.
METHODS: One hundred twenty-eight patients underwent a 99mTc-GSA SPECT/CT-based liver function evaluation. All were classified into the low liver-damage or high liver-damage group. Four clinical (age, sex, background liver disease and histological type) and 8 quantitative 99mTc-GSA SPECT/CT features (receptor index [LHL15], clearance index [HH15], liver-SUVmax, liver-SUVmean, heart-SUVmax, metabolic volume of liver [MVL], total lesion GSA [TL-GSA, liver-SUVmean × MVL] and SUVmax ratio [liver-SUVmax/heart-SUVmax]) were obtained. To predict high liver damage, a machine learning classification with features selection based on Gini impurity and principal component analysis (PCA) were performed using a support vector machine and a random forest (RF) with a five-fold cross-validation scheme. To overcome imbalanced data, stratified sampling was used. The ability to predict high liver damage was evaluated using a receiver operating characteristic (ROC) curve analysis.
RESULTS: Four indices (LHL15, HH15, heart SUVmax and SUVmax ratio) yielded high areas under the ROC curves (AUCs) for predicting high liver damage (range: 0.89-0.93). In a machine learning classification, the RF with selected features (heart SUVmax, SUVmax ratio, LHL15, HH15, and background liver disease) and PCA model yielded the best performance for predicting high liver damage (AUC = 0.956, sensitivity = 96.3%, specificity = 90.0%, accuracy = 91.4%).
CONCLUSION: A machine-learning approach based on clinical and quantitative 99mTc-GSA SPECT/CT parameters might be useful for predicting liver function.

Entities:  

Keywords:  99mTc-GSA; Asialoglycoprotein receptor; Machine learning; SPECT/CT; Support vector machine

Mesh:

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Year:  2021        PMID: 33675380     DOI: 10.1007/s00261-021-02985-1

Source DB:  PubMed          Journal:  Abdom Radiol (NY)


  1 in total

1.  A Novel Algorithm With Paired Predictive Indexes to Stratify the Risk Levels of Neonates With Invasive Bacterial Infections: A Multicenter Cohort Study.

Authors:  Zhanghua Yin; Yan Chen; Wenhua Zhong; Liqin Shan; Qian Zhang; Xiaohui Gong; Jing Li; Xiaoping Lei; Qin Zhou; Youyan Zhao; Chao Chen; Yongjun Zhang
Journal:  Pediatr Infect Dis J       Date:  2022-04-01       Impact factor: 3.806

  1 in total

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