Cardiovascular/stroke risk prevention: A new machine learning framework integrating carotid ultrasound image-based phenotypes and its harmonics with conventional risk factors

被引:34
|
作者
Jamthikar, Ankush [1 ]
Gupta, Deep [1 ]
Khanna, Narendra N. [2 ]
Saba, Luca [3 ]
Laird, John R. [4 ]
Suri, Jasjit S. [5 ]
机构
[1] Visvesvaraya Natl Inst Technol, Dept Elect & Commun Engn, Nagpur, Maharashtra, India
[2] Indraprastha APOLLO Hosp, Dept Cardiol, New Delhi, India
[3] Univ Cagliari, Dept Radiol, Cagliari, Italy
[4] Adventist Hlth St Helena, Heart & Vasc Inst, St Helena, CA USA
[5] AtheroPoint, Stroke Monitoring & Diagnost Div, Roseville, CA 95661 USA
关键词
Atherosclerosis; Conventional risk factors; Covariates; Carotid; Ultrasound; Image-based phenotypes; 10-Year measurements; Harmonics; Features; AtheroRisk-integrated; AtheroRisk-conventional; INTIMA-MEDIA THICKNESS; DISEASE RISK; VALIDATION; CORONARY; GUIDELINES; FRAMINGHAM; SURROGATE; SCORE; WALL;
D O I
10.1016/j.ihj.2020.06.004
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Motivation: Machine learning (ML)-based stroke risk stratification systems have typically focused on conventional risk factors (CRF) (AtheroRisk-conventional). Besides CRF, carotid ultrasound image phenotypes (CUSIP) have shown to be powerful phenotypes risk stratification. This is the first ML study of its kind that integrates CUSIP and CRF for risk stratification (AtheroRisk-integrated) and compares against AtheroRisk-conventional. Methods: Two types of ML based setups called (i) AtheroRisk-integrated and (ii) AtheroRisk-conventional were developed using random forest (RF) classifiers. AtheroRisk-conventional uses a feature set of 13 CRF such as age, gender, hemoglobin A1c, fasting blood sugar, low-density lipoprotein, and high-density lipoprotein (HDL) cholesterol, total cholesterol (TC), a ratio of TC and HDL, hypertension, smoking, family history, triglyceride, and ultrasound-based carotid plaque score. AtheroRisk-integrated system uses the feature set of 38 features with a combination of 13 CRF and 25 CUSIP features (6 types of current CUSIP, 6 types of 10-year CUSIP, 12 types of quadratic CUSIP (harmonics), and age-adjusted grayscale median). Logistic regression approach was used to select the significant features on which the RF classifier was trained. The performance of both ML systems was evaluated by area-under-the-curve (AUC) statistics computed using a leave-one-out cross-validation protocol. Results: Left and right common carotid arteries of 202 Japanese patients were retrospectively examined to obtain 404 ultrasound scans. RF classifier showed higher improvement in AUC (-57%) for leave-oneout cross-validation protocol. Using RF classifier, AUC statistics for AtheroRisk-integrated system was higher (AUC = 0.99,p-value<0.001) compared to AtheroRisk-conventional (AUC = 0.63,p-value<0.001). Conclusion: The AtheroRisk-integrated ML system outperforms the AtheroRisk-conventional ML system using RF classifier. (C) 2020 Cardiological Society of India. Published by Elsevier B.V.
引用
收藏
页码:258 / 264
页数:7
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