1.Prediction of Cognitive Progression in Individuals with Mild Cognitive Impairment Using Radiomics as an Improvement of the ATN System: A Five-Year Follow-Up Study
Rao SONG ; Xiaojia WU ; Huan LIU ; Dajing GUO ; Lin TANG ; Wei ZHANG ; Junbang FENG ; Chuanming LI
Korean Journal of Radiology 2022;23(1):89-100
Objective:
To improve the N biomarker in the amyloid/taueurodegeneration system by radiomics and study its value for predicting cognitive progression in individuals with mild cognitive impairment (MCI).
Materials and Methods:
A group of 147 healthy controls (HCs) (72 male; mean age ± standard deviation, 73.7 ± 6.3 years), 197 patients with MCI (114 male; 72.2 ± 7.1 years), and 128 patients with Alzheimer’s disease (AD) (74 male; 73.7 ± 8.4 years) were included. Optimal A, T, and N biomarkers for discriminating HC and AD were selected using receiver operating characteristic (ROC) curve analysis. A radiomics model containing comprehensive information of the whole cerebral cortex and deep nuclei was established to create a new N biomarker. Cerebrospinal fluid (CSF) biomarkers were evaluated to determine the optimal A or T biomarkers. All MCI patients were followed up until AD conversion or for at least 60 months. The predictive value of A, T, and the radiomics-based N biomarker for cognitive progression of MCI to AD were analyzed using Kaplan-Meier estimates and the log-rank test.
Results:
The radiomics-based N biomarker showed an ROC curve area of 0.998 for discriminating between AD and HC. CSF Aβ42 and p-tau proteins were identified as the optimal A and T biomarkers, respectively. For MCI patients on the Alzheimer’s continuum, isolated A+ was an indicator of cognitive stability, while abnormalities of T and N, separately or simultaneously, indicated a high risk of progression. For MCI patients with suspected non-Alzheimer’s disease pathophysiology, isolated T+ indicated cognitive stability, while the appearance of the radiomics-based N+ indicated a high risk of progression to AD.
Conclusion
We proposed a new radiomics-based improved N biomarker that could help identify patients with MCI who are at a higher risk for cognitive progression. In addition, we clarified the value of a single A/T/N biomarker for predicting the cognitive progression of MCI.
2.Noncontrast Computed Tomography-Based Radiomics Analysis in Discriminating Early Hematoma Expansion after Spontaneous Intracerebral Hemorrhage
Zuhua SONG ; Dajing GUO ; Zhuoyue TANG ; Huan LIU ; Xin LI ; Sha LUO ; Xueying YAO ; Wenlong SONG ; Junjie SONG ; Zhiming ZHOU
Korean Journal of Radiology 2021;22(3):415-424
Objective:
To determine whether noncontrast computed tomography (NCCT) models based on multivariable, radiomics features, and machine learning (ML) algorithms could further improve the discrimination of early hematoma expansion (HE) in patients with spontaneous intracerebral hemorrhage (sICH).
Materials and Methods:
We retrospectively reviewed 261 patients with sICH who underwent initial NCCT within 6 hours of ictus and follow-up CT within 24 hours after initial NCCT, between April 2011 and March 2019. The clinical characteristics, imaging signs and radiomics features extracted from the initial NCCT images were used to construct models to discriminate early HE. A clinical-radiologic model was constructed using a multivariate logistic regression (LR) analysis. Radiomics models, a radiomics-radiologic model, and a combined model were constructed in the training cohort (n = 182) and independently verified in the validation cohort (n = 79). Receiver operating characteristic analysis and the area under the curve (AUC) were used to evaluate the discriminative power.
Results:
The AUC of the clinical-radiologic model for discriminating early HE was 0.766. The AUCs of the radiomics model for discriminating early HE built using the LR algorithm in the training and validation cohorts were 0.926 and 0.850, respectively.The AUCs of the radiomics-radiologic model in the training and validation cohorts were 0.946 and 0.867, respectively. The AUCs of the combined model in the training and validation cohorts were 0.960 and 0.867, respectively.
Conclusion
NCCT models based on multivariable, radiomics features and ML algorithm could improve the discrimination of early HE. The combined model was the best recommended model to identify sICH patients at risk of early HE.
3.Research progress on adverse health effects of fine particulate matter constituents in China
Dajing TANG ; Chengyao SUN ; Fengge CHEN ; Chuan ZHAO ; Mingyang GUAN
Journal of Environmental and Occupational Medicine 2022;39(8):942-948
Air pollution has always been an important factor threatening population health, and with the acceleration of urbanization in China, the adverse health effects associated with air pollution is becoming more and more serious. Numerous scientific studies have shown that chemical components of fine particulate matter are closely related to human health damage. This paper elaborated reported human health outcomes of PM2.5 chemical components, including fatality, morbidity, reproduction & development, and physiological indexes or biomarkers, reviewed the research progress of PM2.5 chemical constituents on human health in China, and summarized the deficiencies of current research, aiming to provide useful clues for future relevant studies.
4.Advances in epidemiological research on effects of air pollution on skin diseases
Chengyao SUN ; Dajing TANG ; Fengge CHEN ; Chuan ZHAO ; Mingyang GUAN
Journal of Environmental and Occupational Medicine 2022;39(11):1304-1309
Air pollution is a major environmental threat to human health, and skin, as the largest organ of the human body, is a major exposure route of air pollutants, so the correlations between air pollutants and skin diseases are noteworthy to study. This paper reviewed the acute effects of air pollutants on the risks of dermatosis outpatient and emergency visits at home and abroad, especially on dermatitis, eczema, urticaria, acne, psoriasis, and other skin diseases with high prevalence rates and heavy disease burdens. The effects of air pollutants on skin diseases are affected by exposure characteristics of air pollutants (such as composition, concentration, and exposure time), environmental factors (such as temperature, humidity, and ultraviolet), and population characteristics. In view of insufficient evidence on the long-term effects of air pollutants on skin diseases and the interaction of environmental factors, future research directions were prospected, aiming to provide new ideas for further study on the effects of air pollutants on skin diseases and the formulation of relevant prevention and control strategies.