| Literature DB >> 35448500 |
Jasjit S Suri1, Sudip Paul2, Maheshrao A Maindarkar2, Anudeep Puvvula1,3, Sanjay Saxena4, Luca Saba5, Monika Turk6, John R Laird7, Narendra N Khanna8, Klaudija Viskovic9, Inder M Singh1, Mannudeep Kalra10, Padukode R Krishnan11, Amer Johri12, Kosmas I Paraskevas13.
Abstract
Parkinson's disease (PD) is a severe, incurable, and costly condition leading to heart failure. The link between PD and cardiovascular disease (CVD) is not available, leading to controversies and poor prognosis. Artificial Intelligence (AI) has already shown promise for CVD/stroke risk stratification. However, due to a lack of sample size, comorbidity, insufficient validation, clinical examination, and a lack of big data configuration, there have been no well-explained bias-free AI investigations to establish the CVD/Stroke risk stratification in the PD framework. The study has two objectives: (i) to establish a solid link between PD and CVD/stroke; and (ii) to use the AI paradigm to examine a well-defined CVD/stroke risk stratification in the PD framework. The PRISMA search strategy selected 223 studies for CVD/stroke risk, of which 54 and 44 studies were related to the link between PD-CVD, and PD-stroke, respectively, 59 studies for joint PD-CVD-Stroke framework, and 66 studies were only for the early PD diagnosis without CVD/stroke link. Sequential biological links were used for establishing the hypothesis. For AI design, PD risk factors as covariates along with CVD/stroke as the gold standard were used for predicting the CVD/stroke risk. The most fundamental cause of CVD/stroke damage due to PD is cardiac autonomic dysfunction due to neurodegeneration that leads to heart failure and its edema, and this validated our hypothesis. Finally, we present the novel AI solutions for CVD/stroke risk prediction in the PD framework. The study also recommends strategies for removing the bias in AI for CVD/stroke risk prediction using the PD framework.Entities:
Keywords: Parkinson’s disease; artificial intelligence; cardiac autonomic dysfunction; cardiovascular disease; deep learning; machine learning; recommendations; stroke
Year: 2022 PMID: 35448500 PMCID: PMC9033076 DOI: 10.3390/metabo12040312
Source DB: PubMed Journal: Metabolites ISSN: 2218-1989
Figure 1Long-term effect of Parkinson’s disease on the brain and heart.
Figure 2Search strategy based on the PRISMA model.
Figure 3A risk factor in PD patients responsible for myocardial infarction.
Figure 4The relation between Parkinson’s disease and Heart.
The studies show the relation between Parkinson’s and Cardiovascular disease.
| SN | Citations | Relation * | ME | PS | Outcome | TRE |
|---|---|---|---|---|---|---|
| 1 | Cuenca-Bermejo et al. [ | Cardiac changes in PD | LBBM | NR | In PD patients with a lack of sympathetic innervation in the heart, cardiac abnormalities have also been identified. Post-prandial hypotension, supine hypertension, increasing blood pressure variability, reduced heart rate variability, and chronotropic incompetence are also symptoms. | NR |
| 2 | Park et al. [ | PD with risk of CVD | Population-based cohort study | NR | PD was linked to an increased risk of cardiovascular disease. Physicians must also pay attention to CVD prevention in individuals with PD. | NR |
| 3 | Potashkin et al. [ | Relation between CVD and PD | LBBM | 47 | Inflammation, insulin resistance, lipid metabolism, and oxidative stress are among the basic mechanisms that both CV disease and PD share. Physical exercise and moderate coffee intake are two modifiable risk variables that are inversely related to both CV disease and PD. | NR |
| 4 | Değirmenci et al. [ | Cardiac effect of PD | LBBM | NR | Cardiac problems are frequent in PD patients. | Levodopa, Monoamine oxidase B inhibitors, catechol-O-methyl transferase inhibitors, anticholinergic drugs, deep brain simulations |
| 5 | Fanciulli et al. [ | Orthostatic hypertension in PD | LBBM | NR | Syncope, unexplained falls, lightheadedness, cognitive impairment, blurred vision, dyspnea, weariness, and shoulders, neck, or low-back discomfort are all symptoms of Orthostatic hypotension. They appear when you stand up and go away when you lie down. | Droxidopa, fludrocortisone, clonidine, transdermal nitroglycerin, nifedipine |
| 6 | Yan et al. [ | Relation of Carotid plaque in PD | LBBM | 68 | As PD becoming worsening, the thickness of carotid plaques also increases. | NR |
| 7 | Scorza et al. [ | Cardiac abnormalities in PD | LBBM | NR | Cardiovascular autonomic dysfunction, cardiomyopathy, coronary heart disease, arrhythmias, conduction abnormalities, and sudden cardiac death are all symptoms of PD/PS. | NR |
| 8 | Günaydın et al. [ | CVD risk in PD under levodopa treatment | LBBM | 65 | Compared to healthy people, those with PD who use L-dopa have increased aortic stiffness and poor diastolic performance. Homocysteine levels in the blood may be a potential pathophysiological factor. | NR |
| 9 | Huang et al. [ | plasma cholesterol risk in PD | LBBM | 156 | Statin usage has been linked to an increased risk of PD, although larger total cholesterol has been linked to a decreased risk. | Statins |
| 10 | Vikdahl et al. [ | CVD risk in PD | LBBM | 147 | High blood cholesterol levels, smoking habits, and a high body mass index (BMI) have all been considered risk factors for PD. A moderate degree of physical exercise may help to lower the risk of heart disease. | NR |
| 11 | Goldstein [ | Dystonia in PD | LBBM | 23 | Orthostatic hypotension in PD can be explained by the loss of sympathetic nerves and the associated failure of the baroreflex. | NR |
| 12 | Liang et al. [ | Risk of CAD due to PD | LBBM | NR | PD is related to an increased risk of AMI; the mechanism needs to be explained. | NR |
| 13 | Goldstein [ | Cardiac denervation in PD | LBBM | 40 | In individuals with PD and neurogenic orthostatic hypotension, cardiac sympathetic denervation is almost ubiquitous. Before the start of the movement disorder, baroreflex-cardiovagal failure and cardiac sympathetic denervation can occur, suggesting that neuroradiologic testing might be used as a biomarker for diagnosing presymptomatic or early PD and monitoring responses to possible neuroprotective therapies. | NR |
| 14 | Pan et al. [ | Relation between Serum Uric acid with vascular PD | LBBM | 160 | Low uric acid levels are more likely to develop PD, and the inverse connection between uric acid and PD severity was strong for males but weak for women. There is no connection for uric acid found in vascular PD. | NR |
| 15 | Wong et al. [ | PD with Cardiac Sympathetic Denervation | LBBM | 27 | In IPD, there is a sign of cardiac sympathetic denervation. | NR |
| 16 | Czarkowska et al. [ | PD with Cardiac response | LBBM | 53 | With the progression of PD, cardiac responses to orthostatic stress worsen. The fall is caused by the detonation. | NR |
| 17 | Buob et al. [ | Cardiac dysfunction in PD | LBBM | 07 | The chronotropic and contractile responses mediated by catecholamines rule out a functionally significant sympathetic malfunction. Sympathetic denervation maybe still not be complete, and the surviving fibers are enough to sustain autonomic control. | NR |
| 18 | Walter et al. [ | PD with Cardiovascular autonomic dysfunction | LBBM | NR | Other parkinsonian illnesses are characterized by peripheral autonomic dysfunction. | Somatostatin, levodopa |
SN: serial number; * RELATION: Effect of PD on CVD; ME: method of evaluation; PS: patient size; TRE: treatment; NR: not reported; AMI: acute myocardial Interaction; LBBM: laboratory based biomarkers.
Figure 5The relationship between L-dopa and stroke.
The studies show the relationship between Parkinson’s and stroke.
| SN | Citations | Relation | ME | PS | Outcome | TRE |
|---|---|---|---|---|---|---|
| 1 | Li et al. [ | Stroke and CAD in PD | LBBM | 63 | Stroke risk was observed to be higher in people with PD. Cerebral small vessel disease has been linked to moderate parkinsonian symptoms. | NR |
| 2 | Studer et al. [ | Heart rate variability and skin resonance in PD | LBBM | 73 | Both SSR and HRV measurements are sensitive in diagnosing ANS dysfunction, not only in the late stages of PD but also in the early stages and can be used to diagnose autonomic derangement in PD patients. | NR |
| 3 | Liu et al. [ | Stroke in PD | Self-reporting a specialist for the diagnosis | 32 | Cerebral infarction is intimately linked to PD due to cerebrovascular and neurodegenerative disorders coincide. Although levodopa causes OH and raised homocysteine, which may increase the risk of stroke, it remains the most effective and essential symptomatic therapy for many people with PD. | NR |
| 4 | Becker et al. [ | Risk of stroke in PD | LBBM | NR | Hyperhomocysteinemia might be a relationship between PD and an increased risk of ischemic stroke. Homocysteine levels beyond a certain threshold have been proven to increase the risk of stroke and coronary artery disease. vascular disease and dementia, as well as the fact that levodopa treatment is linked to both with a rise in homocysteine in the blood. | NR |
| 5 | Levine et al. [ | Traumatic brain injury in PD | LBBM | NR | A potential technique for reducing both physical and cognitive weariness in people with neurologic diseases is exercise training. In people with PD, a cardiovascular exercise plan can help to reduce overall weariness. | NR |
| 6 | Rickards [ | Stroke in PD | NR | NR | Depressive syndromes in chronic neurological illnesses are common and disabling. Their etiology is complex and may be multifactorial in individual patients. | NR |
| 7 | Mastaglia et al. [ | Prevalence stroke in PD | Self-reporting a specialist for the diagnosis | 100 | Postmortem investigation, studies did not directly compare our findings to other studies of stroke-related mortality and morbidity in the PD population. | NR |
SN: serial number; RELATION: Effect of PD on Stroke; ME: method of evaluation; PS: patient size; TRE: Treatment; NR: not reported; SSR: sympathetic skin response; HRV: heart rate variability; OH: orthostatic hypotension; LBBM: laboratory based biomarkers.
Figure 6The biological link between PD and CVD. RoS: reactive oxides stress, ICAM: intercellular adhesion molecule, VCAM: vascular cell adhesion molecule, DM: Diabetes mellitus, NO: nitric oxide, OxLDL: oxidation of low-density lipoprotein; Up Arrow: depicts increase; Down Arrow: depicts decrease.
Figure 7ML model for CVD/stroke risk assessment using Parkinson’s disease.
The table shows the prediction of CVD by using AI.
| SN | Citations | IC | DS | GT | FE | TOC | ML vs. DL | ACC % | AUC |
|---|---|---|---|---|---|---|---|---|---|
| 1 | Suri et al. [ | OBBM, CUSIP | 117 | CVD, Bias | NR | NR | ML | NR | NR |
| 2 | Kandha et al. [ | OBBM, LBBM | 346 | Death | DCNN | NB, SVM, KNN, DT | DL | 83.33 | 0.833 |
| 3 | Jamthikar et al. [ | OBBM, LBBM, CUSIP | 202 | CVD | SVM | NR | ML | 92.53 | 0.92 |
| 4 | Skandha et al. [ | OBBM, LBBM | 246 | Stroke | 11 Models | NR | HDL | 98.30 | 0.983 |
| 5 | Saba et al. [ | OBBM, LBBM, CUSIP | 246 | Death | 6 Models | NR | HDL | 89.00 | 0.898 |
| 6 | Jamthikar et al. [ | OBBM, LBBM (US) | 395 | CVD | PCA | RF | ML | 95.00 | 0.80 |
| 7 | Biswas et al. [ | OBBM, LBBM (US) | 407 | Stroke, Diabetes | NR | CNN | DL | 99.61 | 0.99 |
SN: serial number, IC: input covariates, DS: data size, GT: ground truth, OBBM: office base biomarker, LBBM: laboratory based biomarkers, FE: feature extraction, TOC: type of classifier, ACC: percentage accuracy, US: ultrasound, NR: not reported.
The table shows the prediction of stroke by using AI.
| SN | Citations | IC | DS | GT | FE | TOC | ML vs. DL | ACC % | AUC |
|---|---|---|---|---|---|---|---|---|---|
| 1 | Soun et al. [ | LBBM (CT) | 209 | Stroke | NN | AlexNet | DL | 96.09 | 0.96 |
| 2 | Reva et al. [ | OBBM, LBBM | 200 | Stroke, CT | NB | DT, RF, SVM | ML | 85.32 | NR |
| 3 | Murray et al. [ | OBBM, LBBM | 341 | LVO, Stroke | RF | CNN | HDL | 85.00 | NR |
| 4 | Mouridsen et al. [ | OBBM, LBBM, CUSIP | 16 | Stroke, MRI | NR | CNN | DL | 74.00 | 0.74 |
| 5 | Yu et al. [ | OBBM, LBBM (EMG) | 287 | Stroke, EMG | SVM | RF, LSTM | ML | 98.33 | 0.98 |
| 6 | Ain et al. [ | OBBM, LBBM | 130 | Stroke, non-stroke | NB | NB | ML | 84.00 | NR |
| 7 | Badriyah et al. [ | OBBM (CT) | 29 | Stroke | NB | DT, RF, SVM | HDL | 94.30 | NR |
SN: serial number, IC: input covariates, DS: data size, GT: Gground truth, OBBM: office-based biomarker, LBBM: laboratory based biomarkers, FE: feature extraction, TOC: type of classifier, ACC: percentage accuracy, CT: computer tomography, EMG: electromyography, MRI: magnetic resonance imagining, NR: not reported.
The table shows the prediction of Parkinson’s by using AI.
| SN | Citations | IC | DS | GT | FE | TOC | ML vs. DL | ACC % | AUC |
|---|---|---|---|---|---|---|---|---|---|
| 1 | Bikias et al. [ | LBBM (FoG) | 18 | PD vs. Non PD | SVM | CNN | DL | 90.00 | NR |
| 2 | Pramanik et al. [ | LBBM (Voice) | 252 | PD vs. Non PD | NB | RF | ML | 95.00 | NR |
| 3 | Borzì et al. [ | OBBM, LBBM (FoG) | 11 | PD vs. Non PD | RF | NB | ML | 84.10 | NR |
| 4 | Aich et al. [ | OBBM, LBBM | 20 | PD vs. Non PD | RF | SVM, RF, KNN | ML | 97.35 | 0.74 |
| 5 | Pramanik et al. [ | LBBM (Voice) | 169 | PD vs. Non PD | NB | SVM, RF | ML | 78.97 | 0.78 |
| 6 | Zahid et al. [ | LBBM (Voice) | 50 | PD vs. Non PD | SVM | RF | HDL | 99.1 | NR |
| 7 | Nissar et al. [ | LBBM (Voice) | 188 | PD vs. Non PD | NB | XGBoost | ML | 92.76 | NR |
SN: serial number, IC: input covariates, DS: data size, GT: ground truth, OBBM: office-based biomarker, LBBM: laboratory based biomarkers, FE: feature extraction, TOC: type of classifier, ACC: percentage accuracy, AUC: Area Under Curve, FoG: freezing of gait, NR: not reported.
Comparative analysis of studies CVD and stroke risk stratification in PD Patient. Y: yes, N: no, PD: Parkinson’s disease, CVD: cardiovascular Disease, AI: artificial Intelligence.
| SN | Citations | Year | PD | CVD | Stroke | AI | COVID-19 |
|---|---|---|---|---|---|---|---|
| 1 | Li et al. [ | 2018 | Y | N | Y | N | N |
| 2 | Jamthikar et al. [ | 2020 | N | Y | N | Y | N |
| 3 | Mouridsen et al. [ | 2020 | N | N | Y | Y | N |
| 4 | Bikias et al. [ | 2021 | Y | N | N | Y | N |
| 5 | Reva et al. [ | 2021 | N | N | Y | Y | N |
| 6 | Bermejo et al. [ | 2021 | Y | Y | N | N | N |
| 7 | Pramanik et al. [ | 2021 | Y | N | N | Y | N |
| 8 | Suri et al. (Proposed) | 2022 | Y | Y | Y | Y | Y |