Impact of Artificial Intelligence in Cardiovascular Disease 1 Mir Khan , 2Saleem Ahmed, 3Pardeep Kumar, 2Dost Muhammad Saqib Bhatti 1 National Institute of Cardiovascular Diseases, Karachi, Pakistan 2 Dawood University of Engineering & Technology, Karachi, Pakistan 3 Quaid e Awam University of Engineering Sciences & Technology, Karachi, Pakistan The field of medicine has made tremendous progress, however, cardiovascular diseases (CVD) is still major reason of death cause in the present world. Still major studies are required to improve CVD death ratio. One of the areas which can be exploited in order to reduce CVD is by working on medical imaging. The Artificial Intelligence (AI) strategies such as machine and deep learning with advance clinical data can be benefited to make the unavoidable healthcare benefit through which elderly and constant infection patients can get restorative care at their domestic, lessening hospitalizations and making strides in quality of life. The CVD may be a key chance to wellbeing and the critical source of death worldwide. The event of CVD created 17.6 million deaths in 2016, an increment of 14.5% from 2006 to 2016 [1]. The mortality and disease rates of CVD are growing yearly, specifically in emerging countries [2]. Reports have shown that up to around 80% of CVD-related deaths occur in developing countries. Other than that, these deaths occur at a very young age in developed countries [3]. Furthermore, current pandemic COVID-19 has also higher impact on CVD patients. CVD has put an overwhelming burden on patients and civilization as an entire. Hence, it is necessary to develop techniques for moving forward with determination to cure the CVD in coming years for better future. The AI can be one of the sources and can help to find the solutions for CVD related diseases. Artificial Intelligence (AI): AI is one of the field of computer science which is intelligence shown by machine rather than humans. The AI machines can understand human speech, playing games, autonomous cars and many others. Similarly, AI can play important role in healthcare. Machine Learning (ML) can be employed to develop various algorithms by using medical and healthcare data. The basic role of AI in healthcare is to analyze relationship between patients’ outcome and treatment methods. Another use of AI in healthcare can be used for diagnoses and to prevent the disease by applying suitable machine learning and deep learning algorithms. Besides this, AI can be used in pharmaceutical field which can have further impact on healthcare issues like CVD [4]. The rapid progress of AI methods, mostly in the subdomains of machine learning and deep learning has rapidly concerned the courtesy of clinicians to generate new unified, consistent, and effective approaches in order to solve healthcare issues. AI methods can also support physicians to improve medical conclusions empowering early discovery of subclinical organ failure, with clinically pertinent. Machine Learning (ML): ML helps the system to make better predictions and help making better decision by involving proper data that engages calculations to induce it and learn from it. In addition, the noteworthy of machine learning is to find the hidden patterns from information and create an outline based on that information. Along these lines, the machine can utilize this to provide future patterns [5]. Machine learning could be a prevalent sub discipline of AI, represents different methods for tackling complicated issues with huge information by distinguishing interaction designs among factors. As compared to conventional measurement approaches; machine learning is centered on building robotized clinical choice frameworks (such as read-mission and mortality score frameworks) that help doctors make more exact forecasts, instead of basic assessed score frameworks. Machine learning can be categorized into following three categories as shown in figure-1. Three categories of Machine Learning: 1. Supervised Learning: It is important in supervised learning to train the algorithm. There are different algorithm in supervised learning like regression and convolutional neural networks (CNN). The Supervised learning can utilize in healthcare systems to predict or analyze various medical parameters based on the medical/patient records. 2. Un Supervised learning: In this method the data set is without labels, therefore that suggests that the machine must discover the label itself. Unsupervised learning can play important role in CVD disease treatment and can support solving issues such as CVD forecast, cardiovascular image analysis, conclusion and treatment [5]. 3. Reinforcement Learning: In reinforcement learning, there is no necessity to complete the offered objectives. In supervised and unsupervised learning, humans pose an objective and it should be accomplish by applying one of the mentioned method. Another approach of AI is based on response mechanism, frequently defined as a ‘reward’. The objective of this category of machine learning is not to reach the offered goal, but to exploit the reward for the model throughout the learning process. It has been deployed to enhance the process of patients who are on mechanical ventilation in intensive care units (ICU). Fig. 1. Supervised, unsupervised, and reinforcement learning. The Application of AI in CVD: AI advances have been useful in cardiovascular medicine counting precision medicine, clinical expectation, cardiac imaging examination and intelligent robots and cardiovascular medicine. Precision Medicine: Artificial intelligence can be essentially utilitarian for far off subsequent meet-ups, moment sicknesses guiding, ideal alerts of signs and drug prompts. Simultaneously, from the impression of clinicians, Artificial intelligence can assist assemble with voicing data, connect electronic clinical records frameworks and lessening the remaining task at workload of clinicians [6]. Within the future, intellectual computers (gadgets are taughtby machine or deep learning calculations and can unravel issues deprived of human help) will offer assistance to clinicians in order to make precise choices and forecast patient results. With the assistance of AI, it is most likely to execute a precise therapeutic that modifies healthcare for each individual. AI may not replace clinicians but clinicians can utilize AI innovations to innovate in cardiovascular disease cure and drug development. Clinical Prediction: By using Machine learning and huge information analytics, AI can offer assistance to clinicians to form forecasts that are more precise for patients. Research from Dawes TJW recommends that AI can foresee conceivable times of passing for heart illness patients [7]. In their research, AI program recorded the cardiac magnetic resonance imaging (MRI) and blood lab tests of 256 heart illness patients. The program measured the development of 30,000 meeting point that are checked on the heart structures in each pulse. By merging this information with the patients' eight years’ health records, AI seem foresee the irregular conditions that will lead to persistent passing. Moreover, their program was able to foresee the survival rates of patients for another five year, and another year of survival for patients having chances of 80%. Moreover, Motwani M and his colleagues set up a prophetic prediction using deep learning, in order to increase five year life time, for 10,030 suspected coronary heart infection (CHD) patients. This study shows that the evaluation based on AI has higher accuracy compared to conventional medical judgment and coronary computed tomographic angiography [8]. Cardiac Imaging analysis: With the invent of machine learning, cardiac imaging examination has shown incredible improvement. The machine learning can offer assistance to analyze electrocardiogram (ECG), coronary angiography and echocardiography. In later decades, the cardiac medication has most focus on the counting CHD and acute coronary syndrome (ACS). The Machine learning algorithms can recognize coronary atherosclerotic more precisely than clinicians. In addition, AI can too be utilized to analyze echocardiographic pictures. The College of California, San Francisco, made convolutional neural systems through utilizing the echocardiographies of 267 randomized patients (age range: from 20 to 96 years) between 2000 and 2017 from the college therapeutic center. The 223,000 pictures were isolated into fifteen groups. Moreover, this grouping calculation has outflanked the human cardiovascular doctors within the classification competition of cardiac ultrasound images. The deep learning will make imaging analysis more accurate at ease and early prediction before it becomes severe [9]. Future Prospect: AI has made a lot of progress in cardiovascular medicine. The incorporation of AI and cardiovascular medicine involves qualified services, advance technologies. The AI ventures are most likely to be conducted by huge innovation enterprises such as Google, Apple and Microsoft. Which have contributed intensely in AI to progress the efficiency of cardiovascular medicine. Stanford and Apple propelled a venture entitled “Apple Heart Study” with the assistance of ML. In addition, the advancement of sensor innovation has encouraged the use of AI in cardiovascular medication.The latest Apple watch series 4 has a new transducer that measures ECG. The US Food and Drug Administration (FDA) have approved this new feature. In early 2018, researchers from Verily (Google Life Sciences-Alphabet Inc.'s inquire about organization) utilized machine learning to evaluate the hazard of sympathetic enduring from cardiovascular infection. They effectively performed study to analyze the patient's eye. At that point they also gathered different sorts of information, counting the patient's blood, age, weight and smoking status. Subsequently, this permitted the researchers to foresee the patient's chance of cardiovascular infection. To prepare the calculation, they utilized machine learning to analyze the therapeutic information of about 30 million patients. As aoutcome, the precision of the calculation in recognizing patients with cardiovascular illness was as tall as 70%, which is near to the conventional cardiovascular treatment [10]. Besides, Microsoft as of late reported that they will help out Apollo Medical clinic in India recorded as a hard copy calculation to support clinicians in anticipating the danger causes for CVD. On 9thJanuary, 2017, the FDA offered freedom for the utilization of a cardiovascular Xray examination programming called Cardio DL (from Arterys), that utilizes profound learning for clinical picture investigation and gives mechanized ventricular division to conventional heart X-ray checks. By utilizing distributed computing, Cardio DL can naturally finish picture preparing in under ten seconds, and can draw the framework of the ventricular epicardium and subcardium, to precisely assess the capacity of the ventricle.11 Siemens has constructed a huge information base of in excess of 250 million connected pictures, reports, careful information and different materials for preparing its simulated intelligence computation programs. A team of cardiologists at the University Hospital of Heidelberg conducted a six-year trial. A group of cardiologists at the University Hospital of Heidelberg led a six-year preliminary. They utilized information from patients with cardiovascular breakdown to produce 100 carefully mimicked hearts and utilized artificial intelligence to foresee the forecast of these patients, and afterward contrasted the anticipated outcomes and the genuine circumstance of the patients. Clinicians can even utilize 3D production innovation to make models of the heart, to build up a more suitable cure. All these information recommend that a significant insurgency in the medical use of artificial intelligence in cardiovascular medication (closely resembling a Cambrian blast) may happen shortly, and this application is just the start of the general utilization of computer-based intelligence PUAI and Novel Medical mode: Phenomenon of PUAI: The problems clinical industry has experienced, the greater part of the current ramifications of computer-based intelligence in cardiovascular medication can be depicted as 'PUAI'. In clinical practice, the principle issue looked by specialists consistently ought to be understood first, for example, the right analysis and powerful treatment for understanding. The application and abilities of computer based intelligence depend for huge scope and develop clinical data for AI. At present, it very well may be applied in certain particular conditions, for example, trauma center and chest pain center (CPC). With the improvement of artificial intelligence innovation, we actually cannot ensure that the innovation is solid. A few specialists stress that a few clinicians will depend altogether on computer based intelligence to manage patients. Whereas, specialists are the pillar, and artificial intelligence can assist specialists with improving the adequacy of their treatment [12]. Verghese, et al. called attention to that clinicians can utilize computer based intelligence to more readily serve patients [13]. Studies have proposed that the blend of clinicians and artificial intelligence abilities will furnish patients with better symptomatic outcomes than experience alone.1To this end, in light of the fact that our group has developed another territorial agreeable salvage model to upgrade the conclusion and therapy framework for CPCs [14].We have planned another clinical model that may enable youthful clinicians to decrease the pace of misdiagnosis [15]. Novel medical model: Right now, clinicians give patients direct treatment choices dependent on their personal finding. Nonetheless, because of the clinician's understanding, stress, or exhaust, different causes may make an off-base finding, and even lead to disastrous results. In the new model as shown in figure 2, the clinician can pass the finding plan through artificial intelligence, and if the guidelines are right, the simulated intelligence will accomplish. In the event that the guidelines are scrambled, disregard the directions given by the artificial intelligence dependent on AI and approach the senior clinician for help. It is trusted that new model will decrease the rate of clinical misbehavior brought about by clinician blunders. Fig. 2. The clinician can pass the finding plan through artificial intelligence. Traditional mode Novel medical mode plus PUAI: We can join the idea of PUAI into novel clinical model. We can locate a simpler method to fabricate an artificial intelligence model. Presently, the restricted utilization of computer-based intelligence for clinical conclusion includes the differential finding of CVD. There are a few kinds of CVD, each with various analytic strategies; along these lines, complex calculations and models, for example, profound learning and fortification learning, are needed to expand the trouble of composing calculations and increment the size of preparing informational indexes and computer based intelligence models. Be that as it may, by fusing PUAI into another clinical model, it is just important to plan a little and basic model for the analysis of basic infections, for example, ACS and aortic dismemberment by utilizing less difficult calculations. There is no compelling reason to stress over the restrictions of flow artificial intelligence obstruction between these ailments. For instance, these kinds of thoughts can be applied to build up a notice framework in the current clinical framework, as shown in Figure 3. Fig. 3. current clinical framework The patient arrivesin the emergency clinic after that the patient's data is all the while gone into the information base when the clinician gathers the history. In view of the clinician's finding, the simulated intelligence will agreeing the symptomatic models for the sickness (Standard A) from the information base, contrasted with the patient's genuine condition (Standard B). In the event that the examination results coordinate, the admonition framework will not ready. In case of clashing outcomes, the simulated intelligence will create an alarm, making the clinician aware of cautiously look at his/her finding. This new medical admonition framework is appropriate for ICUs, as well as the coronary consideration unit and CPC, which is particularly valuable during night shifts. Since, in these particular regions, the presentation of night shifts specialists directly affects persistent safety.16 Studies from Maltese, et al. have demonstrated that the dynamic capacity of ICU specialists has dropped altogether [17]. Presently, this new clinical early admonition framework shows incredible potential for evading misdiagnosis brought about around evening time move clinicians' psychological decrease. In addition, the notice framework is anything but difficult to apply. Our group has planned another provincial helpful salvage model to upgrade the analysis and treatment framework for CPCs. It gives ideal and powerful PCI to patients with ST-fragment height myocardial localized necrosis, particularly in creating nations, for example, China [5]. The central issue of this model is to lessen the time from indication beginning to reperfusion and cardiovascular mortality. Later on, we will likely apply this novel clinical model to existing frameworks. By utilizing an AI based calculation, artificial intelligence can cautiously inspect the clinician's determination and curestrategy. The objective is to save more lives. We will keep on refining this novel clinical model and check its functional application esteem in medical practice. At present, CVD stays a significant medical issue influencing the whole world, particularly in low-and center salary nations. It will keep on being the primary driver of mortality in the following twenty years.The utilization of simulated intelligence, particularly AI, has demonstrated incredible potential in overseeing and treating this irksome illness [3,18]. In addition, we solidly accept that later on, computer based intelligence will be a collaborator to clinicians, not a foe, since computer based intelligence was initially intended to mirror human reasoning cycles as opposed to advancement. Hence, the clinician ought to comprehend the importance of simulated intelligence and be acquainted with its use esteem. The capacity of computer-based intelligence will increment as clinicians developfurther mindful of the infection. The improvement of clinical abilities, inside, and out clinical exploration is the reason for the advancement of artificial intelligence. Clinicians must not disregard to persistently figure out how to recover their capacity to help patients, and not to depend a lot on machines and simulated intelligence. Representative Calculations of AI: Machine learning and deep learning consist of a multitude of algorithms. Table 1 summarizes brief descriptions of basic machine learning algorithms used in different tasks. Currently, ensemble learning and deep learning can be described as the mainstay of algorithms of AI. Ensemble learning is a machine learning method that combines multiple “weak” learners (algorithms) such as decision tree and logistic regression (Table 1) to obtain a good prediction. Boosting, bagging, and stacking are the 3 main methods of ensemble learning [19]. Table 1 summarizes brief descriptions of basic machine learning algorithms used in different tasks Algorithm Description Use Logistic regression An algorithm that estimates probability of dichotomized outcome from multiple covariates using logistic function. A flow chart–like algorithm Classification Decision tree Classification/regression (simple) Neural network K nearest neighbor Support vector machine K means Hierarchical clustering Principal component analysis that divides data into branches by considering information gain. The final branches represent output of the algorithm (class or value). An algorithm inspired by human brain architecture. Layers consisting of nodes are connected to one another with edges weighted as per training results. A simple algorithm that classifies observations by comparing k examples that exist in the nearest locations (=examples with the most similar features). Support vector machine draws a boundary line that maximizes margins from each class. New observations are classified using this line A clustering method that makes k clusters in which each observation belongs to the cluster that has its mean in the nearest locations from the observation. A type of cluster analysis that builds a dendrogram with a hierarchy of clusters. Pairs of clusters are merged to form clusters as they move up the hierarchy (agglomerative approach). An algorithm that converts high dimensional data into lower dimensional data with keeping important information as much as possible by orthogonal transformation Classification/regression Classification/regression Classification/regression Clustering Clustering Dimensionality reduction Overview of Pipeline for Image-Based Machine Learning Diagnosis: The in general pipeline to construct ML instruments for image-based cardiac determination is schematically portrayed within the taking after segment, as well as in Figure 4. In brief, it requires (1) input imaging datasets from which appropriate imaging indicators can be extricated, (2) precise yield determination names, and (3) a suitable ML procedure that's ordinarily chosen and optimized depending on the application to foresee the cardiac determination (yield) based on the imaging indicators (input). Extra non-imaging indicators (e.g., electrocardiogram information, hereditary information, sex, or age) are regularly coordinates into the ML demonstrate and regularly move forward demonstrate execution. In this segment, we'll to begin with talk about the input and yield factors in more detail, some time recently presenting common utilized ML procedures and their applications. Fig. 4. Pipeline for building image-based machine learning models. References 1. Thomas H, Diamond J, Vieco A, Chaudhuri S, Shinnar E, Cromer S, Perel P, Mensah GA, Narula J, Johnson CO, Roth GA, Moran AE Glob Heart. “Global Atlas of Cardiovascular Disease 20002016: The Path to Prevention and Control.” 13(3):143-163. 2018 4 2. Global, regional, and national age-sex specific mortality for 264 causes of death, 1980-2016: a systematic analysis for the Global Burden of Disease Study 2016. GBD 2016 Causes of Death Collaborators. Lancet. 390(10100):1151-1210. 2017 3. Gersh BJ, Sliwa K, Mayosi BM, Yusuf S “Novel therapeutic concepts: the epidemic of cardiovascular disease in the developing world: global implications”. Eur Heart J. 31(6):642-8. 2010 4. Gulshan V, Peng L, Coram M, Stumpe MC, Wu D, Narayanaswamy A, Venugopalan S, Widner K, Madams T, Cuadros J, Kim R, Raman R, Nelson PC, Mega JL, Webster DR “Development and Validation of a Deep Learning Algorithm for Detection of Diabetic Retinopathy in Retinal Fundus Photographs.” JAMA. 316(22):2402-2410. 2016 5. Krittanawong C, Zhang H, Wang Z, et al. “Artificial intelligence in precision cardiovascular medicine”. J Am CollCardiol. ;69:2657–2664. 2017 6. Johnson KW, Torres Soto J, Glicksberg BS, et al. “Artificial intelligence in cardiology”. J Am CollCardiol. 71:2668–2679. 2018 7. Dawes TJW, de Marvao A, Shi W, et al. “Machine learning of three-dimensional right ventricular motion enables outcome prediction in pulmonary hypertension: a cardiac MR imaging study”. Radiology. 283:381–390. 2017 8. Motwani M, Dey D, Berman DS,. “Machine learning for prediction of all-cause mortality in patients with suspected coronary artery disease: a 5-year multicentre prospective registry analysis”. Eur Heart J. 38:500–507. 2017 9. Madani A, Arnaout R, Mofrad M,. “Fast and accurate view classification of echocardiograms using deep learning.” NPJ Digit Med. 2018 10. Poplin R, Varadarajan AV, Blumer K, . “Predicting cardiovascular risk factors from retinal fundus photographs using deep learning”. Nat Biomed Eng. 2:158–164. 2018. 11. Arterys cardio DL cloud MRI analytics software receives FDA clearance. In: editor book arterys cardio DL cloud MRI analytics software receives FDA clearance, 2017. Diagnostic and Interventional Cardiology. 2017 12. Russell S, Bohannon J. “Artificial intelligence. Fears of an AI pioneer.” Science. 349:252– 252. 2017 13. Verghese A, Shah NH, Harrington RA. “What this computer needs is a physician: humanism and artificial intelligence.” JAMA. 319:19–20. 2017. 14. Chen JH, Asch SM. “Machine learning and prediction in medicine-beyond the peak of inflated expectations”. N Engl J Med. 376:2507–2509. 2017 15. Yan J, Wang Z, Xu LJ, . “Effects of new regional cooperative rescue model on patients with ST- elevation myocardial infarction.” Int J Cardiol. 177:494–496. 2017 16. Reinke L, Ö zbay Y, Dieperink W,. “The effect of chronotype on sleepiness, fatigue, and psychomotor vigilance of ICU nurses during the night shift.” Intensive Care Med. 41:657– 666. 2017 17. Maltese F, Adda M, Bablon A, “Night shift decreases cognitive performance of ICU physicians.” Intensive Care Med. 42:393–400. 2016. 18. Hu J, Cui X, Gong Y,. P”ortable microfluidic and smartphone-based devices for monitoring of cardiovascular diseases at the point of care.” Biotechnol Adv. 34:305–320. 2016 19. Wang G, Hao J, Ma J, Jiang H. “A comparative assessment of ensemble learning for credit scoring.” Expert Syst Appl. 38:223–230. 2011