Artificial intelligence (AI) has emerged as a transformative force in modern healthcare, revolutionizing how services are delivered, accessed and personalized. Among its most promising applications are AI-enabled chatbots and virtual assistants – intelligent conversational agents designed to simulate human interaction and support both patients and healthcare providers. This chapter investigates the growing integration of such technologies within oncology and physiotherapy, two domains that demand personalized, continuous and multidisciplinary care. In oncology, AI-driven virtual assistants facilitate symptom monitoring, medication adherence, appointment scheduling and emotional support, thereby easing the burden on clinical staff and empowering patients throughout their cancer journey. In physiotherapy, these tools assist with home-based rehabilitation by offering real-time feedback, exercise guidance and progress tracking, enhancing patient compliance and clinical outcomes. Moreover, AI chatbots are being increasingly used for patient education, mental health screening and triage, acting as accessible and always-available resources. This chapter reviews state-of-the-art technologies and evidence supporting their use, including natural language processing (NLP), machine learning (ML) and voice recognition systems. It critically examines the benefits, such as scalability, cost-effectiveness and improved patient engagement, while also addressing pressing challenges, including ethical dilemmas, data privacy concerns, algorithmic biases and limitations in user trust and digital literacy. Adopting an interdisciplinary perspective, this chapter outlines future directions and emerging trends such as integration with electronic health records (EHRs), support for multiple languages and adaptive learning for personalized care. In doing so, it repositions AI-driven conversational tools from mere digital assistants to essential elements of a hybrid care model that helps bridge gaps in both oncology and physiotherapy. Healthcare systems worldwide are under mounting pressure due to aging populations, an increasing prevalence of chronic diseases and rising demands for personalized care. Specialties such as oncology and physiotherapy are particularly affected, as they require ongoing monitoring, multidisciplinary coordination and long-term patient engagement (Raj et al. 2020). Traditional healthcare delivery models often struggle to maintain consistent communication and support for patients, especially between clinical visits. In this context, artificial intelligence (AI)-enabled chatbots and virtual assistants have emerged as promising tools to extend healthcare services beyond conventional settings. These technologies can enhance patient engagement, streamline workflows and provide scalable support throughout the care continuum. To frame the discussion, it is important to define the key technologies explored in this chapter: These tools can be deployed across various interfaces – including smartphones, web-based platforms, wearable devices and electronic health records (EHRs) – to support functions such as symptom tracking, patient education, rehabilitation coaching, appointment scheduling and mental health support. This chapter aims to: Natural language processing (NLP) forms the backbone of conversational AI systems, enabling chatbots and virtual assistants to comprehend, process and generate human language (Babu and Akshara 2024). In healthcare applications, NLP allows these tools to interact meaningfully with patients and clinicians. Key advancements include: These NLP capabilities collectively enable chatbots to act not merely as scripted responders, but as adaptive conversational agents capable of delivering nuanced healthcare communication. Machine learning (ML) enhances the functionality and adaptability of AI-driven chatbots and virtual assistants (Inavolu 2024). Through supervised and reinforcement learning, these systems can refine their responses, personalize interactions and predict patient needs over time. Key elements include: A critical enabler of personalized care is the integration of chatbots with electronic health records (EHRs) and mobile health (mHealth) devices. Such integration allows for: Oncology patients frequently face complex and emotionally charged information regarding their diagnosis, treatment options and potential outcomes. AI-enabled chatbots can play a critical role in improving health literacy and empowering patients to participate actively in their care (Anisha et al. 2024). These tools provide 24/7 access to understandable, consistent and personalized medical information: By improving both patient comprehension and clinician decision-making, these tools support shared decision-making and enhance the quality of oncology care. Managing symptoms during cancer treatment is crucial for patient safety and quality of life. Conversational AI can facilitate real-time symptom tracking, prompt interventions and improve communication between patients and providers (Li et al. 2023): Such systems reduce delays in addressing adverse effects and improve adherence to treatment regimens, contributing to better clinical outcomes and reduced hospital readmissions. Cancer diagnosis and treatment are often accompanied by significant psychological distress, including anxiety, depression, isolation and fear of recurrence (Simonelli et al. 2017). AI-based conversational agents are increasingly used to address these psychosocial needs: Enrolling in clinical trials is a critical yet often overlooked component of cancer care. Despite the availability of numerous studies, many patients either remain unaware of relevant trials or are unable to navigate the complex enrollment processes (Siembida et al. 2021). AI-powered chatbots and virtual assistants are increasingly being leveraged to address these challenges, offering a more accessible and efficient pathway to trial participation.
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AI-enabled Chatbots and Virtual Assistants in Oncology and Physiotherapy
10.1. Introduction
10.1.1. Background
10.1.2. Definitions and scope
10.1.3. Objectives
10.2. Technological foundation
10.2.1. Natural language processing (NLP)
10.2.2. Machine learning and knowledge bases
10.2.3. Integration with EHRs and mHealth devices
10.3. Applications in oncology
10.3.1. Patient education and decision support
10.3.2. Symptom monitoring and reporting
10.3.3. Mental health and psychosocial support
10.3.4. Clinical trial navigation
10.4. Applications in physiotherapy
10.4.1. Remote exercise supervision
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