Artificial Intelligence /

AI-Powered Healthcare: How Chatbots Are Transforming Healthcare

Chatbot breakthrough in the 2020s? An ethical reflection on the trend of automated consultations in health care PMC

chatbot technology in healthcare

Another limitation stems from the fact that in-app purchases were not assessed; therefore, this review highlights features and functionality only of apps that are free to use. Lastly, our review is limited by the limitations in reporting on aspects of security, privacy and exact utilization of ML. While our research team assessed the NLP system design for each app by downloading and engaging with the bots, it is possible that certain aspects of the NLP system design were misclassified. Chatbots can also be classified according to the permissions provided by their development platform.

Although there are a variety of techniques for the development of chatbots, the general layout is relatively straightforward. As a computer application that uses ML to mimic human conversation, the underlying concept is similar for all types with 4 essential stages (input processing, input understanding, response generation, and response selection) [14]. First, the user makes a request, in text or speech format, which is received and interpreted by the chatbot. From there, the processed information could be remembered, or more details could be requested for clarification. After the request is understood, the requested actions are performed, and the data of interest are retrieved from the database or external sources [15].

So, healthcare providers can use a chatbot dedicated to answering their patient’s most commonly asked questions. Questions about insurance, like covers, claims, documents, symptoms, business hours, and quick fixes, can be communicated to patients through the chatbot. Therapy chatbots that are designed for mental health, provide support for individuals struggling with mental health concerns.

Hospitals begin test driving Google’s medical AI chatbot: report – Fox Business

Hospitals begin test driving Google’s medical AI chatbot: report.

Posted: Mon, 10 Jul 2023 07:00:00 GMT [source]

Madhu et al [31] proposed an interactive chatbot app that provides a list of available treatments for various diseases, including cancer. This system also informs the user of the composition and prescribed use of medications to help select the best course of action. The diagnosis and course of treatment for cancer are complex, so a more realistic system would be a chatbot used to connect users with appropriate specialists or resources. A text-to-text chatbot by Divya et al [32] engages patients regarding their medical symptoms to provide a personalized diagnosis and connects the user with the appropriate physician if major diseases are detected. Rarhi et al [33] proposed a similar design that provides a diagnosis based on symptoms, measures the seriousness, and connects users with a physician if needed [33].

Mathematical or statistical probability in medical diagnosis has become one of the principal targets, with the consequence that AI is expected to improve diagnostics in the long run. Hacking (1975) has reminded us of the dual nature between statistical probability and epistemic probability. Statistical probability is concerned with ‘stochastic laws of chance processes’, while epistemic probability gauges ‘reasonable degrees of belief in propositions quite devoid of statistical background’ (p. 12).

While chatbots offer many benefits for healthcare providers and patients, several challenges must be addressed to implement them successfully. AI chatbots are used in healthcare to provide patients with a more personalized experience while reducing the workload of healthcare professionals. We first report the results that emerged from the statistical analysis on the entire data set. This analysis helped us understand several patterns of the large-scale use of DoctorBot, including who used it, the length of each consultation, how often users used the application, and what health concerns users had queried about.

Ensuring compliance with healthcare chatbots involves a meticulous understanding of industry regulations, such as HIPAA. Implement robust encryption, secure authentication mechanisms, and access controls to safeguard patient data. Regularly update security protocols to align with evolving regulations and standards.

It can act upon the new information directly, remember whatever it has understood and wait to see what happens next, require more context information or ask for clarification. That provides an easy way to reach potentially infected people and reduce the spread of the infection. After training your chatbot on this data, you may choose to create and run a nlu server on Rasa. Some of these platforms, e.g., Telegram, also provide custom keyboards with predefined reply buttons to make the conversation seamless. This concept is described by Paul Grice in his maxim of quantity, which depicts that a speaker gives the listener only the required information, in small amounts. One of the key elements of an effective conversation is turn-taking, and many bots fail in this aspect.

Reduced wait times

Chatbots are no longer seen as mere assistants, and their way of interacting brings them closer to users as friendly companions [21]. According to a study, social media user requests on chatbots for customer service are emotional and informational, with the first category rate being more than 40% and with users not intending to take specific information [22]. Machine learning is what gives the capability to customer service chatbots for sentiment detection and also the ability to relate to customers emotionally as human operators do [23].

Chatbots must be regularly updated and maintained to ensure their accuracy and reliability. Healthcare providers can overcome this challenge by investing in a dedicated team to manage bots and ensure they are up-to-date with the latest healthcare information. Chatbots can be accessed anytime, providing patients support outside regular office hours.

In the wake of stay-at-home orders issued in many countries and the cancellation of elective procedures and consultations, users and healthcare professionals can meet only in a virtual office. The challenge here for software developers is to keep training chatbots on COVID-19-related verified updates and research data. As researchers uncover new symptom patterns, these details need to be integrated into the ML training data to enable a bot to make an accurate assessment of a user’s symptoms at any given time.

Regularly update and patch security vulnerabilities, and integrate access controls to manage data access. Comply with healthcare interoperability standards like HL7 and FHIR for seamless communication with Electronic Medical Records (EMRs). Proactive monitoring and rapid issue resolution protocols further fortify the security posture. Overall, the integration of chatbots in healthcare, often termed medical chatbot, introduces a plethora of advantages. From heightened patient interactions to streamlined healthcare processes, these chatbots play a pivotal role in delivering efficient, accessible, and patient-centric care in our technologically advancing healthcare landscape.

How much does a healthcare chatbot cost?

The use of AI for symptom checking and triage at scale has now become the norm throughout much of the world, signaling a move away from human-centered health care [9] in a remarkably short period of time. Recognizing the need to provide guidance in the field, the World Health Organization (WHO) has recently issued a set of guidelines for the ethics and principles of the use of AI in health [10]. When a patient interacts with a chatbot, the latter can ask whether the patient is willing to provide personal information. The bot can also collect the information automatically – though in this case, you will need to make sure that your data privacy policy is visible and clear for users. In this way, a chatbot serves as a great source of patients data, thus helping healthcare organizations create more accurate and detailed patient histories and select the most suitable treatment plans.

  • So in case you have a simple bot and don’t want your patients to complain about its insufficient knowledge, either invest in a smarter bot or simply add an option to connect with a medical professional for more in-depth advice.
  • Rule-based model chatbots are the type of architecture which most of the first chatbots have been built with, like numerous online chatbots.
  • This can be anything from nearby facilities or pharmacies for prescription refills to their business hours.

This paper complements this research and addresses a gap in the literature by assessing the breadth and scope of research evidence for the use of chatbots across the domain of public health. We acknowledge the difficulty in identifying the nature of systemic change and looking at its complex network-like structure in the functioning of health organisations. Nonetheless, we consider it important to raise this point when talking about chatbots and their potential breakthrough in health care. We suggest that new ethico-political approaches are required in professional ethics because chatbots can become entangled with clinical practices in complex ways.

What are the different types of healthcare chatbots?

This means it’s expected to grow at a rate of 20.1% each year from 2023 to 2032, according to market.us.In today’s rapidly changing digital landscape, healthcare chatbots are emerging as pivotal players. These digital assistants, powered by artificial intelligence, are set to revolutionize how we access healthcare and manage our well-being. Here’s a glimpse into the future with ten predictions about these smart health buddies. As you can see, chatbots are on the rise and both patients and doctors recognize their value. Bonus points if chatbots are designed on the base of Artificial Intelligence, as the technology allows bots to hold more complex conversations and provide more personalized services. This bot uses AI to provide personalized consultations by analyzing the patient’s medical history and while it cannot fully replace a medical professional, it can for sure provide valuable advice and guidance.

chatbot technology in healthcare

While most people would use Google and probably misdiagnose themselves, Buoy has come up with a solution. They built one of the most highly intuitive AI-powered chatbots in healthcare, which could come up with possible diagnoses for a patient’s symptoms by asking around 20 questions. So, it’s now time to put it to practice and show you the 4 top AI-powered chatbots in healthcare you can see today.

Another app is Weight Mentor, which provides self-help motivation for weight loss maintenance and allows for open conversation without being affected by emotions [47]. Health Hero (Health Hero, Inc), Tasteful Bot (Facebook, Inc), Forksy (Facebook, Inc), and SLOWbot (iaso heath, Inc) guide users to make informed decisions on food choices to change unhealthy eating habits [48,49]. The effectiveness of these apps cannot be concluded, as a more rigorous analysis of the development, evaluation, and implementation is required. Nevertheless, chatbots are emerging as a solution for healthy lifestyle promotion through access and human-like communication while maintaining anonymity. Knowledge domain classification is based on accessible knowledge or the data used to train the chatbot. Under this category are the open domain for general topics and the closed domain focusing on more specific information.

Healthcare payers and providers, including medical assistants, are also beginning to leverage these AI-enabled tools to simplify patient care and cut unnecessary costs. Whenever a patient strikes up a conversation with a medical representative who may sound human but underneath is an intelligent conversational machine — we see a healthcare chatbot in the medical field in action. Today, chatbots offer diagnosis of symptoms, mental healthcare consultation, nutrition facts and tracking, and more. For example, in 2020 WhatsApp collaborated with the World Health Organization (WHO) to make a chatbot service that answers users’ questions on COVID-19. The prevalence of cancer is increasing along with the number of survivors of cancer, partly because of improved treatment techniques and early detection [77]. A number of these individuals require support after hospitalization or treatment periods.

AI might improve mental health services in other ways

Interestingly, the disease type was also highly related to users’ experiences and their satisfaction level (Figure 10). For example, medical advice about common diseases, such as respiratory issues, usually received positive ratings. One possible explanation is that the chatbot could easily diagnose these diseases and provide pertinent information and medical advice to fulfill the users’ needs. The initial data set had some noisy data; for example, one consultation session could be stored as two separate sessions, and two consultation sessions could be merged. Therefore, we preprocessed the data by splitting the sticky conversations and spliced the broken conversations. After data processing, the research team examined the entire data set to ensure the accuracy and appropriateness of the data format.

Healthcare Chatbots Market to Reach USD 1168 million in – GlobeNewswire

Healthcare Chatbots Market to Reach USD 1168 million in.

Posted: Wed, 10 May 2023 07:00:00 GMT [source]

In healthcare technology, in particular, the handling of sensitive medical and financial data by AI tools necessitates stringent data protection measures. Furthermore, the algorithms used by these chatbots must be highly accurate to ensure they interpret queries correctly and perform the appropriate actions if patients and clinicians are expected to rely on the outcomes. They can coordinate multiple specialists’ calendars and optimize the patient’s time. Chatbots in healthcare also provide personalized reminders and address common inquiries, enhancing the patient experience and reducing administrative burden. These capabilities make AI chatbots an indispensable tool for modern healthcare management, revolutionizing appointment scheduling. As healthcare becomes increasingly complex, patients have more and more questions about their care, from understanding medical bills to managing chronic conditions.

From catching up on sports news to navigating bank applications to playing conversation-based games on Facebook Messenger, chatbots are revolutionizing the way we live. Chatbots can provide insurance services and healthcare resources to patients and insurance plan members. Moreover, integrating RPA or other automation solutions with chatbots allows for automating insurance claims processing and healthcare billing. With the vast number of algorithms, tools, and platforms available, understanding the different types and end purposes of these chatbots will assist developers in choosing the optimal tools when designing them to fit the specific needs of users. These categories are not exclusive, as chatbots may possess multiple characteristics, making the process more variable.

Uninterrupted Availability for Health Queries

Most implementations are platform-independent and instantly available to users without needed installations. Contact to the chatbot is spread through a user’s social graph without leaving the messaging app the chatbot lives in, which provides and guarantees the user’s identity. Moreover, payment services are integrated into the messaging system and can be used safely and reliably and a notification system re-engages inactive users.

Today, chatbots are capable of much more than simply answering questions, and their role in healthcare organizations is quite impressive. Below, we discuss what exactly chatbots do that makes them such a great aid and what concerns to resolve before implementing one. A key component of creating a successful health bot is creating a conversational flow that is easy to understand. Transitional phrases like “furthermore” and “moreover” can be used to build a smooth conversation between the user and the chatbot.

Thorough testing is done beforehand to make sure the chatbot functions well in actual situations. The health bot’s functionality and responses are greatly enhanced by user feedback and data analytics. For medical diagnosis and other healthcare applications, the accuracy and dependability of the chatbot are improved through ongoing development based on user interactions. Integrating the chatbot with Electronic Health Records (EHR) is crucial to improving its functionality. By taking this step, you can make sure that the health bot has access to pertinent patient data, enabling tailored responses and precise medical advice.


chatbot technology in healthcare

You can foun additiona information about ai customer service and artificial intelligence and NLP. Considering their capabilities and limitations, check out the selection of easy and complicated tasks for artificial intelligence chatbots in the healthcare industry. Companies are actively developing clinical chatbots, with language models being constantly refined. As technology improves, conversational agents can engage in meaningful and deep conversations with us.

Chatbots, also known as chatter robots, smart bots, conversational agents, digital assistants, or intellectual agents, are prime examples of AI systems that have evolved from ML. The Oxford dictionary defines a chatbot as “a computer program that can hold a conversation with a person, usually over the internet.” They can also be physical entities designed to socially interact with humans or other robots. Predetermined responses are then generated by analyzing user input, on text or spoken ground, and accessing relevant knowledge [3].

For example, we found that users tended to terminate the consultation when they were asked to describe their symptoms or chief complaints. To address these issues, it would be useful to allow users to share and describe information in the form of voice recordings to reduce the amount of time and effort spent on typing. The chatbots should also be designed to inform users as to why a particular piece of information is needed [52]. The analysis of user feedback revealed that users expressed the need to receive more actionable information, such as next steps to take. Also, users complained that the system-generated diagnostic report was difficult to interpret. These findings highlight the importance of providing more useful information that patients need.

Studies in the existing research often do not provide sufficient information about the design of the chatbot being tested to be reproducible, including by RCT standards, as the chatbot description is not sufficient for an equivalent chatbot to be implemented. There are further confounding factors in the intervention design that are not directly chatbot related (eg, daily notifications for inputting mood data) or include aspects such as the chatbot’s programmed personality that affect people differently [33]. As an emerging field of research, the future implications of human interactions with AI and chatbot interfaces is unpredictable, and there is a need for standardized reporting, study design [54,55], and evaluation [56]. Two-thirds (21/32, 66%) of the chatbots in the included studies were developed on custom-developed platforms on the web [6,16,20-26], for mobile devices [21,27-36], or personal computers [37,38]. A smaller fraction (8/32, 25%) of chatbots were deployed on existing social media platforms such as Facebook Messenger, Telegram, or Slack [39-44]; using SMS text messaging [42,45]; or the Google Assistant platform [18] (see Figure 4). This result is possibly an artifact of the maturity of the research that has been conducted in mental health on the use of chatbots and the massive surge in the use of chatbots to help combat COVID-19.

Healthcare providers must ensure that chatbots are regularly updated and maintained for accuracy and reliability. Commercial adoption of voice technology confirms customer acceptability and provides strong grounds for the scalability and implementation of medical applications. The supportive evidence comes from the National Public Radio and Edison Research’s “Smart Audio Report,” chatbot technology in healthcare which shows that there are 157 million voice devices in US households [67]. Moreover, Statista projected that the number of digital VAs in use will rise to 8 billion worldwide by 2023 [68]. Woebot, a text-based mental health service, warns users up front about the limitations of its service, and warnings that it should not be used for crisis intervention or management.

chatbot technology in healthcare

For RCTs, the number of participants varied between 20 to 927, whereas user analytics studies considered data from between 129 and 36,070 users. Overall, the evidence found was positive, showing some beneficial effect, or mixed, showing little or no effect. Most (21/32, 65%) of the included studies established that the chatbots were usable but with some differences in the user experience and that they can provide some positive support across the different health domains. While being seriously impacted by the COVID-19, the healthcare industry is steadily gaining traction in terms of its digital transformation and is adopting more and more innovative technologies on a regular basis. Chatbots, being among the most affordable solutions, have become valuable assets for healthcare organizations worldwide, and their value is recognized by both medical professionals and patients.

Due to the small numbers of papers, percentages must be interpreted with caution and only indicate the presence of research in the area rather than an accurate distribution of research. If you think of a custom chatbot solution, you need one that is easy to use and understand. This can be anything from nearby facilities or pharmacies for prescription refills to their business hours.

This persuasion and negotiation may increase the workload of professionals and create new tensions between patients and physicians. The Rule requires that your company design a mechanism that encrypts all electronic PHI when necessary, both at rest or in transit over electronic communication tools such as the internet. Furthermore, the Security Rule allows flexibility in the type of encryption that covered entities may use.

The surge in COVID-19 cases has placed unprecedented strain on health care systems, requiring adjustments in treatment delivery to patients. Despite the fact that the traditional clinical approach was partially substituted with web-based visits, the mismatch between demand and resources is a realistic challenge. The capacity of health care systems to adjust is limited by the incremental rate at which systems can grow by training new health care providers and reorganization of the structure [36].

chatbot technology in healthcare

Textbox 1 describes some examples of the recommended apps for each type of chatbot but are not limited to the ones specified. This review article aims to report on the recent advances and current trends in chatbot technology in medicine. A brief historical overview, along with the developmental progress and design characteristics, is first introduced. The focus will be on cancer therapy, with in-depth discussions and examples of diagnosis, treatment, monitoring, patient support, workflow efficiency, and health promotion. In addition, this paper will explore the limitations and areas of concern, highlighting ethical, moral, security, technical, and regulatory standards and evaluation issues to explain the hesitancy in implementation.

According to the analysis from the web directory, health promotion chatbots are the most commonly available; however, most of them are only available on a single platform. Thus, interoperability on multiple common platforms is essential for adoption by various types of users across different age groups. In addition, voice and image recognition should also be considered, as most chatbots are still text based. Further refinements and large-scale implementations are still required to determine the benefits across different populations and sectors in health care [26]. Although overall satisfaction is found to be relatively high, there is still room for improvement by taking into account user feedback tailored to the patient’s changing needs during recovery. In combination with wearable technology and affordable software, chatbots have great potential to affect patient monitoring solutions.