Accessibility challenges of e-commerce websites

Today, there are many e-commerce websites, but not all of them are accessible. Accessibility is a crucial element that can make a difference and determine the success or failure of a digital business. The study was applied to 50 e-commerce sites in the top rankings according to the classification proposed by ecommerceDB. In evaluating the web accessibility of e-commerce sites, we applied an automatic review method based on a modification of Website Accessibility Conformance Evaluation Methodology (WCAG-EM) 1.0. To evaluate accessibility, we used Web Accessibility Evaluation Tool (WAVE) with the extension for Google Chrome, which helps verify password-protected, locally stored, or highly dynamic pages. The study found that the correlation between the ranking of e-commerce websites and accessibility barriers is 0.329, indicating that the correlation is low positive according to Spearman’s Rho. According to the WAVE analysis, the research results reveal that the top 10 most accessible websites are Sainsbury’s Supermarkets, Walmart, Target Corporation, Macy’s, IKEA, H&M Hennes, Chewy, Kroger, QVC, and Nike. The most significant number of accessibility barriers relate to contrast errors that must be corrected for e-commerce websites to reach an acceptable level of accessibility. The most neglected accessibility principle is perceivable, representing 83.1%, followed by operable with 13.7%, in third place is robust with 1.7% and finally understandable with 1.5%. Future work suggests constructing a software tool that includes artificial intelligence algorithms that help the software identify accessibility barriers.


INTRODUCTION
Internet technology has radically revolutionized the world of communications to become a global means of communication. The number of e-commerce websites has increased significantly due to the pandemic COVID-19 (World Health Organization, 2021); the global confinement caused many businesses to close.
Statistics from the Statista website (Statista, 2021) indicate that e-commerce has undergone a substantial transformation in recent years thanks to digitization in modern life.
found that 54.4% of the sites present contrast problems related to the principle of perception.
As future work, we suggest considering the problems of hardware limitations and interstitial advertising. We also recommend building a software tool with artificial intelligence algorithms that include new heuristics to help developers identify accessibility barriers to generate more accessible and inclusive sites.
The remainder of this paper is structured as follows; "Literature Review" reviews the literature on web accessibility. "Web Accessibility Principles" shows the methodology used to evaluate accessibility in e-commerce sites. "Materials and Methods" shows the results obtained by applying the evaluation. "Results" contains the discussion of the outcomes. "Discussion" explains the restrictions of the research. Finally, conclusions and future work are described in parts VII and VIII.

LITERATURE REVIEW
The pandemic status related to COVID-19 has accelerated the movement of industry, education and business to the virtual world, and on par with these events, several e-commerce websites have been created (Munkova et al., 2021).
According to Villa & Monzón (2021), Pollák, Konečný & Ščeulovs (2021) and Paștiu et al. (2020), COVID-19 has impacted the growth of e-commerce websites; unprecedented worldwide changes are evident in the various forms of consumer habits. Consumer behavior shows an evolutionary shift from offline to online, where e-commerce applications require (1) more accessible designs, (2) greater sustainability, (3) software applications that utilize business intelligence.
In reviewing the literature, we found some research related to the evaluation of web accessibility in e-commerce sites, methods, and tools used in automatic inspection. Paz et al. (2021) argue the accessibility with which software products, including e-commerce stores, should be designed. It indicates that some countries apply laws and government policies that ensure accessibility to websites considering different skills and abilities. The study compared the results of five tools for inspecting the accessibility of e-commerce websites; the conclusions show that there are no 100% accessible sites. Xu (2020) compares the accessibility of e-commerce, considering compliance with web accessibility guidelines. As a case study, they applied the evaluation to 45 e-commerce websites. They used the Web Accessibility Assessment Tool (WAVE); the results revealed that websites with Accessible Rich Internet Applications (ARIA) attribute lower accessibility levels overall. They concluded that the accessibility of mature websites was higher than that of new websites with innovative products. Alshamari (2016) argues that many tools can help make a website accessible. The article explores some available tools that help designers and developers evaluate web accessibility. The research results indicate that navigation, readability, and timing are the most common accessibility issues when evaluating the accessibility of selected websites. Padure & Pribeanu (2020) argues that WAVE tool is a free tool provided by Web Accessibility In Mind (WebAIM). The authors indicate that WAVE offers a color-coding system: red for errors that need to be corrected urgently, green for correct lines but still need to be checked, and yellow for potential problems that need manual review. Oliveira, Afonso & Pinto (2020) infer that accessibility is fundamental in the democratization of technologies, so applying the Web Content Accessibility Guidelines (WCAG 2.1) is essential. The accessibility evaluation was applied to three websites operating in Portugal, considering the three best-positioned retailers' ranking corresponding to the SimilarWeb. The results obtained established a collection of suggestions to increase the accessibility of websites aimed at e-commerce. Our study differs from Oliveira, Afonso & Pinto (2020) and Xu (2020) because the total sample is taken from ecommerceDB, which presents the e-commerce websites related to market trends and a ranking of the leading e-commerce stores. Our evaluation applied a new method based on the methodology (WCAG-EM) 1.0. In addition, the WAVE evaluation tool is based on version 3.1.6, updated as of October 14, 2021, which includes the plugin component that allows evaluating websites that require authentication. We, therefore, propose 10 recommendations to improve the accessibility of the websites listed in the discussion section.
Research (Abascal, Arrue & Valencia, 2019) related to Web accessibility evaluation argues that manual verification of compliance with accessibility guidelines is often complicated and unmanageable, so the authors suggest applying software tools that perform automatic accessibility evaluations. It presents a review of the main features of tools used for Web accessibility evaluation and presents an introspection of the future of accessibility tools.
Acosta-Vargas, Antonio Salvador-Ullauri & Lujan-Mora (2019) suggest that verifying the accessibility of a Web site is a considerable challenge for accessibility specialists. Today, there are quantitative and qualitative methods for verifying whether a website is accessible. In general, the methods use automatic tools because they are low-cost, but they do not represent a perfect solution. The authors propose a heuristic method with a manual review supported by the Web Content Accessibility Guidelines 2.1. The evaluators concluded that the research could serve as a preliminary argument for upcoming analyses concerned with web accessibility heuristics.
Our investigation proposes an automatic review method using the WAVE Web Accessibility Evaluation Tool (WebAIM, 2021). Earlier studies by Acosta-Vargas, Acosta & Lujan-Mora (2018) indicated that one of the best tools for automated review is WAVE, which allows you to identify any accessibility barriers, centered on the Web Content Accessibility Guidelines (WCAG) 2.1 (World Wide Web Consortium, 2018) that help in automatic review and evaluation by web content experts.
This preliminary study was applied to the 50 best-ranked e-commerce stores according to the ranking proposed by the ecommerceDB site (EcommerceDB, 2020), which contains detailed information on more than 20,000 stores from 50 countries and 13 categories.

WEB ACCESSIBILITY PRINCIPLES
Previous studies indicate the increase of e-commerce in COVID-19 time; this accelerated growth has generated millions of e-commerce websites, but many sites are not accessible; therefore, it is essential to bear in mind the Web Content Accessibility Guidelines 2.1 (WCAG 2.1) proposed by the World Wide Web Consortium.
Web accessibility implies that people with incapacities can use the web. This process implies that they can recognize, identify, navigate, and relate to the website. WCAG 2.1 (World Wide Web Consortium, 2018) consists of four principles, 13 guidelines and 78 conformance such as compliance or success criteria, plus some techniques.
Principle 1: Perceptible refers to the website's contents and the interface design for all users. It includes the audiovisual contents, the interface, images, buttons, video players and other components that must be accessible, recognizable, and feasible by any individual in any condition, tool, and operating system.
Principle 2: Operable, this means that a website should be as intuitive as possible, with options to perform an action or search for content. The more alternatives included in the site's navigation, the better its accessibility. In other words, the website must ensure all keyboard-based functionality and avoid designs that may cause epileptic seizures.
Principle 3: Understandable implies that the site includes legible and understandable elements, both in the form and substance of the texts. It must contain fonts that all users can read in its form. In addition, it should be predictable as to how the site works so that potential users do not waste time trying to guess how a tool works for better navigation.
Principle 4: Robust refers to websites or applications that must be compatible with all browsers, operating systems, and devices, as well as assistive technology applications or digital ramps.
The four principles of accessibility contain 13 guidelines that support the goals of website designs to make content more accessible to users with disabilities. Each guideline includes success criteria that can be applied in situations for compliance testing in a contractual agreement. To meet accessibility requirements, three conformance levels are defined, with A being the lowest, AA being a medium level and acceptable by WCAG, and AAA being the highest (World Wide Web Consortium, 2018).
The documentation includes several techniques; the techniques are grouped into two classes (1) those that are sufficient to achieve the success criteria and (2) advisable techniques that allow the authors to better comply with the guidelines. In addition, some of the advisable techniques deal with accessibility barriers that the verifiable success criteria have not covered.

MATERIALS AND METHODS
In this research to evaluate the accessibility of e-commerce websites, we applied an automatic review method (World Wide Web Consortium, 2014) centered on a modification of the Website Accessibility Conformance Evaluation Methodology (WCAG-EM) 1.0.
We used Web Accessibility Evaluation Tool (WAVE) (WebAIM, 2021) with the extension for Google Chrome, which helps verify password-protected and highly dynamic pages. Utah State University developed the WAVE automatic evaluation tool to help find potential accessibility issues according to WCAG 2.1, facilitating manual evaluation.
It should be noted that manual testing cannot be replaced, especially when it comes to accessibility, as it may be essential to test with end-users with disabilities. Accessibility validation was performed using guidelines based on Section 508 and WCAG 2.1; some phases of this methodology (Salvador-Ullauri et al., 2020) were tested in previous works of the authors related to serious games; the methodology for evaluating e-commerce websites is summarized in eight phases, as shown in Fig. 2.

Phase 1 select e-commerce websites
In this phase, we selected the 50 e-commerce websites that are in the top rankings according to the classification proposed by ecommerceDB (EcommerceDB, 2020). In this preliminary phase, we define the level of compliance with WCAG 2.1 (World Wide Web Consortium, 2018). In this case, we evaluated the AA level within the level accepted and recommended by WCAG 2.1. This knowledge can be improved to propose future work; we also determined the lowest configuration of web browser patterns, operating systems and assistive technologies with which the website should work during the testing phase. This case study used the Windows 10 operating system with Google Chrome browser version 95.0.4638.54 and screen reader support.

Phase 2 categorize the type of users
According to Salvador-Ullauri et al. (2020), in this phase, we involved three web accessibility experts with experience in the area since 2015, who have more than 10 scientific publications in web accessibility evaluations, serious games, and accessible mobile applications. Discrepancies found in the automatic review of e-commerce sites were resolved in consensus. Experts performed the automatic review with WAVE; as evaluated by experts, WAVE is one of the best performing tools according to previous studies (Acosta-Vargas, Acosta & Lujan-Mora, 2018). This phase identified the flow of events users interact with when browsing e-commerce sites.

Phase 3 define the test scenario
According to Salvador-Ullauri et al. (2020), this phase identifies the essential functionalities of the e-commerce website to help select the most representative instances.
The definition of the test scenario serves as the basis for the subsequent selection of the e-commerce sites. In this case, we apply the following scenario: (1) We enter the first page of the website.
(2) We interact by selecting and purchasing products on the e-commerce website. (3) We test how to fill out and submit the forms. (4) We check if account registration on the e-commerce site is required.

Phase 4 explore the e-commerce website
In this phase, the first page of each website was explored. The evaluators explored the e-commerce website to understand its purpose, functionality, and usage. Initial exploration of this phase was considered in Phase 1 by selecting a representative sample, then refined in phase 5 by evaluating with WAVE. Involving accessibility experts and website designers can help get the scans more efficiently. At first, cursory checks were performed to help identify relevant web pages; later, a more detailed evaluation of each website component was performed. Therefore, this phase is essential for evaluators to access all the essential components and functionalities of the website.

Phase 5 evaluate with WAVE
In this phase, the experts used WAVE to evaluate the home page of each e-commerce website. The assessment was conducted in March 2021; during this phase, the evaluators audited the sample e-commerce websites and the states of the websites selected in phases 1 and 4. The evaluation was conducted following the WCAG 2.1 conformance requirements at the AA level previously defined in phase 1. The conformance level, web pages, processes and technologies, and compatibility with accessibility and non-interference were considered. In this phase, it was essential to know the WCAG 2.1 (World Wide Web Consortium, 2018) conformance requirements and the experience of accessibility experts. In addition, the authors classified accessibility barriers by matching the WCAG 2.1 principles, guidelines, and success criteria, which were then validated with WAVE results.

Phase 6 record evaluation data
In this phase, the assessment data was documented in a spreadsheet to organize a dataset available in Mendeley (Acosta-Vargas et al., 2021). The dataset includes information with the names of the audited websites, the URLs of the e-commerce sites, and the evaluation data used to replicate this study as part of good practices that help researchers. The set organizes the information into spreadsheets, containing (1) The e-commerce websites evaluated. (2) The results of the e-commerce websites evaluated with WAVE.
(3) The map of the number of e-commerce websites per country. (4) The diagram of the accessibility evaluation process with WAVE. (5) A summary of the evaluation of e-commerce websites. (6) The accessibility principles of WCAG 2.1. (7) Accessibility barriers identified when evaluating with WAVE. (8) E-commerce websites vs compliance. (9) E-commerce websites with errors and contrast errors. (10) The number of alerts, features, structural elements and ARIA. (11) E-commerce websites and the relation to accessibility levels.

Phase 7 classify and analyze data
Following previous work by Salvador-Ullauri et al. (2020), data related to accessibility principles, success criteria, and accessibility levels are organized in this phase. This information is detailed in the results section and discussed in the discussion section. Also, the e-commerce websites were classified by (1) The countries to which each domain corresponds according to the registered URL. (2) The severe errors in need of correction to remove accessibility barriers. (3) Contrast errors that make access difficult for visually impaired users. (4) The ranking in which they are placed and the level of accessibility. The data analysis was performed with Microsoft Excel version 365 MSO 16.0.14326.20504, with macros, advanced functions, tables, and dynamic graphs.

Phase 8 suggest accessibility improvements
In this phase, proposals for improvements to the e-commerce websites were presented. The improvements are detailed in the discussion section.

RESULTS
This research was applied to a sample of the top 50 e-commerce websites taken from ecommerceDB; which contains information on more than 20,000 e-shops from around 50 countries. It is divided into several categories such as revenue and competitor analysis, market development, performance and traffic indicators, vendor submission, payment options, social media activity and SEO information. The ecommerceDB.com database also covers e-commerce market analysis, customer behaviors and buying patterns, market trends and company histories. Table 1 contains the sites that were evaluated with WAVE.
The evaluation of the accessibility of e-commerce stores was carried out with the WAVE automatic review tool. Rich Internet applications tend to dynamically update the Document Object Model (DOM) structure, which is why the method used by WAVE to analyze the rendered DOM of pages uses heuristics and logic to detect end-user accessibility barriers considering WCAG 2.1 (World Wide Web Consortium, 2018). All automatic review tools, including WAVE, have limitations; they can detect barriers in 35% of possible compliance failures (WebAIM, 2021). The method applied in evaluating the accessibility of e-commerce stores was based on a modification of the World Wide Web Consortium (2014) WCAG-EM 1.0; our method consists of an eight-phase process detailed in Fig. 2.  Table 2 presents the data obtained from the accessibility evaluation of e-commerce websites with WAVE. It contains the number of WCAG 2.1 compliance failures that may affect specific users. Web developers should correct the barriers identified in the evaluation to make the e-commerce site accessible and inclusive. The contrast errors found in this study are related to the text that violates WCAG 2.1 contrast requirements. The term alerts are related to elements that may cause accessibility problems; in this case, the evaluator is the one who decides the impact of the accessibility of the website. Features imply that elements can improve accessibility when implemented correctly. Structural elements are related to some title of a web page, indicating that it has been marked as a top-level title or related to several milestones. Finally, the ARIA element presents information about accessibility for people with disabilities; in such a way, it influences accessibility when misused. Figure 3 shows the number of e-commerce sites by country, taken as a sample for the accessibility evaluation. The most significant number of e-commerce sites evaluated corresponds to the United States, with 24 sites representing 48% of the total, followed by the United Kingdom, with eight sites representing 16%. With six e-commerce sites, Greater China accounts for 12% in third place. Next, Germany, with three sites, accounts for 6%, followed by France and Russia, with two sites each, representing 8% of the total. Lastly, Brazil, Canada, Italy, Japan and Spain, with one e-commerce site, account for 10%. Figure 4 shows two categories of barriers, warning and serious barriers; the most significant warning barriers are ARIA, Structural Elements, Features and Alerts. These barriers do not affect accessibility to a high degree, and correcting them is unnecessary. The serious barriers with a high number are Contrast Errors with 1,721 barriers, representing 7.4% (pink bars) and Errors with 1,229, corresponding to 5.3% (sky blue bars), which must be corrected urgently for e-commerce sites to reach an acceptable level of accessibility. ARIA attributes (World Wide Web Consortium, 2018) add semantic information to the elements of a website, specifically for properties that help to inform: (1) The state of an element of the graphical interface. (2) The content of a section     Table 3 summarizes the barriers identified during the evaluation of the e-commerce sites with WAVE. Table 3 includes the barriers, success criteria, level, principle, and total barriers of the 50 e-commerce websites assessed. Table 3 comprises the success criteria composed of three numbers; the first is associated with the accessibility principle, the second to the guideline, and the third to the success criteria related to the accessibility barrier.   Figure 5 shows a synopsis of the accessibility principles recognized in the assessment of e-commerce websites. The most neglected accessibility principle is perceivable, representing 83.1% of the total, followed by operable with 13.7%, in third place is robust with 1.7%, and finally, understandable with 1.5%. Figure 6 summarizes the barriers identified in the accessibility evaluation. The most affected accessibility barrier corresponds to Contrast with 54.4%, followed by Non-text Content, representing 25.6%, in third place is Link purpose, representing 11.6% of the total. The rest of the barriers, such as info and relationships, name, role, value, headings and labels, labels or instructions, bypass blocks, keyboard, the language of page and error identification, correspond to values lower than 3.1%. Figure 7 presents the e-commerce sites and the level of web accessibility; among the top ten most accessible websites according to this analysis with WAVE, we have Sainsbury's Supermarkets, Walmart, Target Corporation, Macy's, IKEA, H&M Hennes, Chewy, Kroger, QVC, and Nike.
In addition, the correlation between the ranking of e-commerce sites and accessibility barriers was analyzed. In Table 4, the test statistic p > 0.05 for Errors, Contrast Errors and Ranking have a normal distribution despite their variability. While applying Lilliefors significance correction, the variables Errors and Contrast Errors p < 0.05 confirm that they do not have a normal distribution. However, the variable Ranking with Lilliefors significance correction has a p > 0.05, confirming a normal distribution. Table 5 presents Spearman's non-parametric correlation between e-commerce website ranking and accessibility barriers. In this case, the correlation is significant for accessibility barriers at the 0.05 level (bilateral).
In analyzing the accessibility of e-commerce websites, we applied multivariate descriptive statistics and pivot tables with the Excel tool. In addition, to analyze the correlation between the ranking of e-commerce websites and accessibility barriers, we applied the IBM SPSS Statistics version 25 statistical software with which we applied the Kolmogorov-Smirnov and Lilliefors significance correction. We found a nonparametric correlation, so we applied Spearman's Rho between the ranking of e-commerce websites and the accessibility barriers of e-commerce websites. The correlation is 0.329, which indicates that the correlation is low positive.

DISCUSSION
Concerning the modification made in WCAG-EM 1.0, three additional phases were included. By applying WAVE in phase 5, it is possible to perform automatic checks, which considerably reduces review time and detects numerous problems that would take more time and would be difficult to identify manually. Our methodology allows linking WCAG 2.1 criteria to accessibility barriers; this method can be applied throughout the website development cycle.
Currently, e-commerce sites have become essential tools to perform commercial transactions due to the COVID-19; with the findings obtained, it is evident that web designers and developers need to utilize the WCAG 2.1 (World Wide Web Consortium, 2018) to have more accessible and inclusive e-commerce sites. We identified that there is a  The most accessible store is Sainsbury's Supermarkets, located in the United Kingdom with zero "Errors", followed by Walmart, Target, Chewy, IKEA, and Macy's, from the United States and H&M from Germany with one "Errors", the rest of the e-commerce websites have more than one "Errors" and more than six "Contrast Errors".
In the evaluation of e-commerce websites, it was found that the most common errors are related to "Contrast errors", representing 54.4% of the total, in second place "Non-text Content", corresponding to 25.6%, "Link Purpose" corresponds to 11.6% and "Info and Relationships" with 3.1% of the total.
Of the 50 e-commerce websites evaluated, 44.2% of the total comply with level "A" for accessibility and 55.8% with level "AA"; none of the sites evaluated reach level "AAA".
The highest number of accessibility barriers are condensed in the "perceivable" principle, representing 83.1% of the total, while 16.9% are distributed among the "operable," "robust," and "understandable" principles. This finding implies that more barriers are related to problems for users with low vision, including older adults (Padmanaban, Konrad & Wetzstein, 2019); vision deteriorates with age due to the eye's normal aging process. The existence of ocular degenerative diseases such as glaucoma, age-related macular degeneration, diabetic retinopathy, age-related cataracts, and cardiovascular accidents can mainly trigger a decrease in visual acuity and the visual field.
One of the most frequently repeated barriers on e-commerce sites is contrast and color usage, vital parameters for web accessibility. In contrast, most of the world's users are visually impaired. According to the World Health Organization (2021), worldwide, at least 2.2 billion people have near or distance vision problems.
Achieving accessibility on e-commerce websites is an excellent challenge, so it is essential to apply the contrast ratio, which measures the difference in "luminance" or perceived brightness between two colors. The difference in brightness is expressed as a ratio varying from 1:1. WCAG 2.1 suggests addressing contrast with the three success criteria, 1.4.3 Contrast (minimum), 1.4.6 Contrast (enhanced) and 1.4.11 Contrast without text. In WCAG 2.1, it is suggested that 4.5:1 is the minimum required. Possibly some of these combinations are not very readable for all users.
For an e-commerce website to be accessible (World Wide Web Consortium, 2018), it must meet level AA for accessibility; the evaluated e-commerce websites do not present any accessibility statement or specify whether they officially comply. Since the home page of these e-commerce sites is the user's entry point, it should be a primary objective for enhancements in terms of accessibility. Improving e-commerce websites should be a responsibility that companies take on, as it enhances the user experience and reduces the technology gap that people with disabilities may experience.
Accessibility issues can be reduced with the following recommendations (1) Improve contrast by considering the colors and contrasts of the screen, checking that they are displayed correctly on all devices. (2) Eliminate time limits, or at least lengthen them.
It is essential to consider that users with disabilities need more time to browse online.
(3) Always adding the option to "skip content" is very useful for users who access the Internet with screen readers and avoid content that does not interest them. (4) Provide transcripts of texts: in addition to subtitling videos, it is advisable to include transcripts so that the hearing impaired can read the video content at their own pace. (5) Add captions to graphics: especially those whose description does not conform to the "alt" attribute. The use of the "Alt" attribute, called "alternative text," is essential for blind users who use screen readers. (6) Avoid using red to highlight important things; it would be fine if no people had color blindness problems. A good accessibility option is to use more giant letters or representative icons. (7) Write contents oriented to any reader, with and without disabilities. (8) Use legible fonts larger than 15px. (9) Avoid using paragraphs longer than four lines. (10) Use images and diagrams that help the reader understand the content better.
This study brings originality since the 50 top-ranked e-commerce sites were evaluated. Nowadays, e-commerce websites must have accessibility policies and standards; several transactions are made electronically due to the pandemic.
This research can guide developers and designers of e-commerce websites to spread the use of WCAG 2.1, which is intended to cover a more extensive set of recommendations to make the web more accessible. WCAG 2.1 can be considered as a superset containing WCAG 2.0. Therefore, as WCAG 2.1 extends WCAG 2.0, there are no incompatible requirements between one version.

LIMITATIONS
This research has a fundamental limitation; it was evaluated using the WAVE automated review tool. Despite being a powerful tool that helps organizations improve the accessibility of websites for people with disabilities, WAVE cannot tell whether web content is accessible; only a human being can determine true accessibility. This evaluation did not include testing with users with disabilities; three accessibility experts conducted accessibility testing. No additional hardware or digital ramps were used in this study to achieve greater accessibility during the website evaluation process.

CONCLUSIONS
We consider the research relevant, especially during the COVID-19 period, when e-commerce is considered the leading solution in confining and indirectly improving the global economy. The procedure for evaluating e-commerce websites with the WAVE tool can be applied to any website to make it more than accessible. We recommend performing evaluations with heuristic methods based on WCAG 2.1 (World Wide Web Consortium, 2018) accessibility barriers and automated reviews with users with different disabilities. We found that 55.8% of the websites reach the "AA" level suggested by WCAG 2.1. We found a low positive correlation between the rating of e-commerce websites and accessibility barriers according to Spearman's Rho of 0.329. The study revealed that 25.6% of e-commerce websites present images of the products they offer and that 54.4% of the sites present contrast problems related to the perception principle, which need to be solved urgently to make the sites more inclusive. Finally, we suggest that business people, governments, and academia work in multidisciplinary teams to generate laws and regulations related to web accessibility that would benefit all users, especially those with disabilities.

FUTURE WORK
It is recommended to: (1) Perform tests with other automatic review tools and compare the results obtained for future research; (2) conduct tests with users with different disabilities; (3) build a software tool that includes artificial intelligence algorithms that help the software learn the heuristics that may cause accessibility barriers; (4) include hardware limitations and interstitial advertising in the study.