Artificial Intelligence and Machine Learning in Travel Health DOI
Hemant Yadav, Pooja Yadav, Surbhi Sharma

и другие.

IGI Global eBooks, Год журнала: 2025, Номер unknown, С. 69 - 84

Опубликована: Март 28, 2025

In recent years, artificial intelligence (AI) and machine learning (ML) have become a crucial part of various industries, including travel. As travelers increasingly sophisticated in their needs demands, travel companies must keep up with the ever-changing market. By integrating AI ML into operations, can gather analyze vast amounts data to better understand customers improve overall experience. Travel health management is complex due global mobility, emerging diseases, need for personalized solutions anywhere, anyplace, anytime (3As). This chapter will explore how technologies are revolutionizing healthcare 21st Century. The deal predictive analytics, recommendations, real-time monitoring, ethical concerns, next decade's challenges innovative using ML.

Язык: Английский

Harnessing Artificial Intelligence to Enhance Global Breast Cancer Care: A Scoping Review of Applications, Outcomes, and Challenges DOI Open Access
Jolene Li Ling Chia, George He, Kee Yuan Ngiam

и другие.

Cancers, Год журнала: 2025, Номер 17(2), С. 197 - 197

Опубликована: Янв. 9, 2025

In recent years, Artificial Intelligence (AI) has shown transformative potential in advancing breast cancer care globally. This scoping review seeks to provide a comprehensive overview of AI applications care, examining how they could reshape diagnosis, treatment, and management on worldwide scale discussing both the benefits challenges associated with their adoption. accordance PRISMA-ScR ensuing guidelines reviews, PubMed, Web Science, Cochrane Library, Embase were systematically searched from inception end May 2024. Keywords included "Artificial Intelligence" "Breast Cancer". Original studies based focus narrative synthesis was employed for data extraction interpretation, findings organized into coherent themes. Finally, 84 articles included. The majority conducted developed countries (n = 54). publications last 10 years 83). six main themes screening 32), image detection nodal status 7), AI-assisted histopathology 8), assessing post-neoadjuvant chemotherapy (NACT) response 23), margin assessment 5), as clinical decision support tool 9). been used tools augment treatment decisions multidisciplinary tumor board settings. Overall, demonstrated improved accuracy efficiency; however, most did not report patient-centric outcomes. show promise enhancing diagnostic planning. However, persistent adoption, such quality, algorithm transparency, resource disparities, must be addressed advance field.

Язык: Английский

Процитировано

1

A critical look into artificial intelligence and healthcare disparities DOI Creative Commons

D Li,

Shruti Parikh,

Ana Costa

и другие.

Frontiers in Artificial Intelligence, Год журнала: 2025, Номер 8

Опубликована: Март 6, 2025

Artificial intelligence (AI) has permeated many aspects of daily life, including medicine, in recent years. As 2021, 343 AI-enabled medical devices had been approved by the United States Food and Drug Administration, with more development (1). Most notable thus far AI's ability to assist every step radiology workflow: it can determine appropriateness imaging, recommend most appropriate imaging exam, predict wait times or appointment delays, interpret much potential utilizations (2). The World Health Organization proposed that AI tools be integrated into healthcare improve efficiency achieve sustainable health-related (3). reduce costs administrative burdens, waiting for patients receive care, diagnostic abilities patient facilitate data management, expedite discovery (4,5).However, advancement comes unique drawbacks. For example, security privacy are at risk must improved, as may readily unknowingly provide consent covert collection methods (6,7). Use seriously reconsidered if poses a confidentiality, non-negotiable healthcare. With rapidly gather analyze large amounts data, controlling scope its use becomes challenge: these progress collect disclose without direct investigator oversight (5). In addition, healthcare-based research conducted non-clinical settings, rolling out certain clinical settings result non-evidence-based practice (6). clinicians feel tempted tasks beyond their validation, training not adequately represent scenarios encounter (8). fact, studies on have administered (5).That is say should used It does, however, require immense consideration how designed why utilized. Some contended goal developing minimize health disparities make system equitable (1,9). Yet, characteristics this difficult achieve. such, there growing body literature discusses role both closing perpetuating inequalities (10)(11)(12). directly proportional quality sets used, authors addressed concerns regarding bias datasets lack diversity teams ultimately resulting AI-driven care (5,(13)(14)(15). This article draws from existing add ongoing conversation about implications disparities. Specifically, we discuss economic implications, explainability systems, importance compassionate care. Ultimately, while indeed confer benefits system, remains may, instead, backfire.One essential any kind social disparity economics. notorious having highest expenditure globally, costing $3.5 trillion, 17.9% Gross Domestic Product (16). Any measure decrease burden -either US internationally -may attractive. save billions annual (17). greatly streamline workflow, even tasks. An automated alleviate burdens such scheduling patients, estimating times, billing insurance companies (2,17,18). Such workflow optimization cost delivery cutting intermediaries typically handle mundane turn, patients' financial responsibility related reduced.On side, screen diagnose conditions, stratify disease risk, devise treatment plans significantly errors factors associated adverse outcomes (4). Eventually, technology advances, perform procedures, given deemed ethical, safe evidence-based. While seem like simply perk those practicing physician-rich areas, they could become indispensable areas affected shortages professionals (19). Urban rural communities bear brunt inequity, struggling access primary specialty (20). estimated 2030, shortage up 104,900 physicians implementation underserved populations help challenges Furthermore, assistants physician burnout therefore (21).These advantages conferred only proper development, installation maintenance systems. requires investment. One model an glaucoma screening tool Changjiang county China fifteen-year accumulated incremental using was $434,903.20 approximately 2000 (22). arguably worth early detection reduced progression, impractical roll larger populations. institutions wealthy countries easily But what countries? Community hospitals limited government funding? Practices less purchasing power? Even analyses demonstrate saved long run, upfront investment too obstacle (16).Once developed, purchased, installed, another issue.Software updates, advanced computing technologies, ever-increasing cloud storage requirements evolving cybersecurity needs protect information create further barriers widespread application (23). These all-around nuanced than mere implement practice. Inevitably, algorithms higher lower levels sophistication, infrastructures robust, measures stronger weaker. choose will closely tied status. Of course, then leave behind under-resourced communities.Currently, "explainable" play decision making (24). other words -exactly do technologies work? How decisions? questions developers themselves cannot answer; know work, yet nobody fully explain how. "black box" holds important worldwide. Machine learning (ML) component which involves based (25). Detecting correcting biases ethical prerequisite justice AI-and ML-based decision-making words, explainable enables identify correct set-based currently skew (10,13).The discussion additional considerations. Explainable models keep accountable accountability precedes error concern compounded fact who literate likely ask seek (26). Since prepared participate shared making, challenge questionable decisions (27).AI treated support decision-making, one independently. prescription systems developed aid prevent human (28,29). recommendation conflicts judgement. arise trained treat, thereby generating recommendations poorly aligned realities particularly relevant minority historically under-studied (15). Healthcare providers critically assess context experience preferences. Institutions establish clear policies accept reject suggestions maintain care.Justice also transparent foster trust system. Unexplainable, opaque models, hand, exacerbate mistrust already pervades prevalent socially economically marginalized (30). A key underprivileged patient's comfort physicians' personal involvement (31). see unexplainable black box ML -if handled correctly -would certainly concerns. Lack explanation impersonal, alienate vulnerable population widen disparities.Even elucidate box, ever replace physician-patient relationship delivering empathic care? Currently, seems unlikely -one study demonstrated chatbots empathetic sympathetic responses lowered perception authenticity (32). contrast, empathy sympathy expressed did induce negative effect perceived undermine subjective satisfaction but objectively worsen outcomes. some provided sound biomedical diabetes overlooked psychosocial components necessary glycemic control (33). Algorithms A1c goals, calculate medication dosages, send prescriptions optimize However, tailored disproportionately affect greater barriers. Continuing stand-alone case diabetes, significant include afford healthy food, free time follow-up visits literacy understand (34). Now combine slew medications, unemployment ailing family member. Surely, manage countless different ways. There no path. Regardless, imperative -human AI-based -address compassion.Palliative emphasizes relieving suffering optimizing life end-oflife field compassion (35). risks depersonalizing cases lacking when families need most. Death dying often rooted culture, beliefs, spirituality. deeply each Whereas encourage open communication death, others uncomfortable it; whereas value life-prolonging regardless prognosis, so (36). Palliative imposing "one-size-fits-all" aWestern dataset Once again, understudied cultural minorities fall "understanding" -or thereof -of values.Society large, regulators, policy makers, companies, carefully consider incorporating practices business medicine. Regulators raised over regulation well generalizability (37). Another area several stakeholders regulators legal fear exists scenario made conversely accusations negligent AI. Physicians were neither nor agreed assuming AI, believed liable since medicine Each side felt understood "part whole" highlighting Appropriate makers needed ensure promote mitigated informing involved (38).Certain narratives pitted rival skills education physicians, claims day (38). solely setting final being human. Rhetoric continues pit against hinder incorporation Patients benefit replacing avoiding altogether.In discussing disparities, low-and middle-income (LMICs). where resources personnel scarce, workload (39). especially available (40). Disease outbreaks predicted earlier allow mobilization areas. severity failure illnesses malaria, tuberculosis dengue fever LMICs face implementing electronic records limiting factor input high income (HICs) reflect When applying LMICs, updated applied to. Failure reinforce (40).Gaining integration problem future. small interviewing perspectives GP, subjects mixed feelings (41). common amongst participants sharing wanted assurance would obtained prior anonymization used. survey 203 public opinion yielded results, near 50/50 split asked physician's diagnosing conditions (42). same study, majority trusted culturally biased decision. positive outlook towards future 25% respondents believe next 10 years nearly half 50 (42).Similarly, lacks intelligence, rather wisdom -the sense intuition accumulate (43). Can develop time? mimic brain synthesizing decades' making? simple cases, can. complex story -risks intervention weighed complications predicted, all easilydigestible manner. Yet layer nuance added shared-decision introducednow, desires uncertainties level incorporate recommendations. Moreover, remain maker, spend meaningful conversations facilitating (37,44). alike.While increase bridge gaps healthcare, inclusive avoid worsening hinges optimal course action, execute plan appropriately. Particularly communities, critical process building maintaining proved absence pose success delivery. Both alike wish standard interaction. Instead, serve adjunct reducing chance error. Collaboration among

Язык: Английский

Процитировано

0

Artificial Intelligence and Machine Learning in Travel Health DOI
Hemant Yadav, Pooja Yadav, Surbhi Sharma

и другие.

IGI Global eBooks, Год журнала: 2025, Номер unknown, С. 69 - 84

Опубликована: Март 28, 2025

In recent years, artificial intelligence (AI) and machine learning (ML) have become a crucial part of various industries, including travel. As travelers increasingly sophisticated in their needs demands, travel companies must keep up with the ever-changing market. By integrating AI ML into operations, can gather analyze vast amounts data to better understand customers improve overall experience. Travel health management is complex due global mobility, emerging diseases, need for personalized solutions anywhere, anyplace, anytime (3As). This chapter will explore how technologies are revolutionizing healthcare 21st Century. The deal predictive analytics, recommendations, real-time monitoring, ethical concerns, next decade's challenges innovative using ML.

Язык: Английский

Процитировано

0