A low-cost machine learning-based cardiovascular/stroke risk assessment system: integration of conventional factors with image phenotypes

被引:66
|
作者
Jamthikar, Ankush [1 ]
Gupta, Deep [1 ]
Khanna, Narendra N. [2 ]
Saba, Luca [3 ]
Araki, Tadashi [4 ]
Viskovic, Klaudija [5 ]
Suri, Harman S. [6 ]
Gupta, Ajay [7 ]
Mavrogeni, Sophie [8 ]
Turk, Monika [9 ]
Laird, John R. [10 ]
Pareek, Gyan [11 ]
Miner, Martin [12 ]
Sfikakis, Pettus P. [13 ]
Protogerou, Athanasios [14 ,15 ]
Kitas, George D. [16 ]
Viswanathan, Vijay [17 ,18 ]
Nicolaides, Andrew [19 ,20 ]
Bhatt, Deepak L. [21 ]
Suri, Jasjit S. [22 ]
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] Toho Univ, Div Cardiovasc Med, Tokyo, Japan
[5] Univ Hosp Infect Dis Croatia, Dept Radiol & Ultrasound, Zagreb, Croatia
[6] Brown Univ, Dept Neurosci, Providence, RI 02912 USA
[7] Weill Cornell Med, Dept Radiol, New York, NY USA
[8] Onassis Cardiac Surg Ctr, Cardiol Clin, Athens, Greece
[9] Univ Med Ctr Maribor, Dept Neurol, Maribor, Slovenia
[10] Adventist Hlth, Heart & Vasc Inst, St Helena, CA, St Helena
[11] Brown Univ, Minimally Invas Urol Inst, Providence, RI 02912 USA
[12] Miriam Hosp Providence, Mens Hlth Ctr, Providence, RI USA
[13] Natl & Kapodistrian Univ Athens, Rheumatol Unit, Athens, Greece
[14] Natl & Kapodistrian Univ Athens, Dept Cardiovasc Prevent, Athens, Greece
[15] Natl & Kapodistrian Univ Athens, Res Unit, Clin & Lab Pathophysiol, Athens, Greece
[16] Dudley Grp NHS Fdn Trust, R&D Acad Affairs, Dudley, England
[17] MV Hosp Diabetes, Chennai, Tamil Nadu, India
[18] Prof M Viswanathan Diabet Res Ctr, Chennai, Tamil Nadu, India
[19] Vasc Screening & Diagnost Ctr, Nicosia, Cyprus
[20] Univ Nicosia, Med Sch, Nicosia, Cyprus
[21] Harvard Med Sch, Brigham & Womens Hosp, Hosp Heart & Vasc Ctr, Boston, MA 02115 USA
[22] AtheroPoint, Stroke Monitoring & Diagnost Div, Roseville, CA 95661 USA
关键词
Atherosclerosis; conventional risk factors (CRF); carotid ultrasound (CUS); carotid intima-media thickness (cIMT); carotid stenosis; cardiovascular disease (CVD); stroke; 10-year risk; machine learning (ML); INTIMA-MEDIA THICKNESS; CAROTID-ARTERY STENOSIS; ASSOCIATION TASK-FORCE; AMERICAN-COLLEGE; DISEASE RISK; IMT MEASUREMENT; ULTRASOUND; PLAQUE; VALIDATION; CORONARY;
D O I
10.21037/cdt.2019.09.03
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Background: Most cardiovascular (CV)/stroke risk calculators using the integration of carotid ultrasound image-based phenotypes (CUSIP) with conventional risk factors (CRF) have shown improved risk stratification compared with either method. However such approaches have not yet leveraged the potential of machine learning (ML). Most intelligent ML strategies use follow-ups for the endpoints but are costly and time-intensive. We introduce an integrated ML system using stenosis as an endpoint for training and determine whether such a system can lead to superior performance compared with the conventional ML system. Methods: The ML-based algorithm consists of an offline and online system. The offline system extracts 47 features which comprised of 13 CRF and 34 CUSIP. Principal component analysis (PCA) was used to select the most significant features. These offline features were then trained using the event-equivalent gold standard (consisting of percentage stenosis) using a random forest (RF) classifier framework to generate training coefficients. The online system then transforms the PCA-based test features using offline trained coefficients to predict the risk labels on test subjects. The above ML system determines the area under the curve (AUC) using a 10-fold cross-validation paradigm. The above system so-called "AtheroRisk-Integrated" was compared against "AtheroRisk-Conventional", where only 13 CRF were considered in a feature set. Results: Left and right common carotid arteries of 202 Japanese patients (Toho University, Japan) were retrospectively examined to obtain 395 ultrasound scans. AtheroRisk-Integrated system [AUC=0.80, P<0.0001, 95% confidence interval (CI): 0.77 to 0.84] showed an improvement of similar to 18% against AtheroRisk-Conventional ML (AUC=0.68, P<0.0001, 95% CI: 0.64 to 0.72). Conclusions: ML-based integrated model with the event-equivalent gold standard as percentage stenosis is powerful and offers low cost and high performance CV/stroke risk assessment.
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收藏
页码:420 / +
页数:14
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