Matches in SemOpenAlex for { <https://semopenalex.org/work/W4384519963> ?p ?o ?g. }
- W4384519963 endingPage "126" @default.
- W4384519963 startingPage "107" @default.
- W4384519963 abstract "Artificial intelligence (AI) is playing a vitally important role in promoting the revolution of future technology. Healthcare is one of the promising applications in AI, which covers medical imaging, diagnosis, robotics, disease prediction, pharmacy, health management, and hospital management. Numbers of achievements that made in these fields overturn every aspect in traditional healthcare system. Therefore, to understand the state-of-art AI in healthcare, as well as the chances and obstacles in its development, the applications of AI in disease detection and outlook and the future trends of AI-aided disease prediction were discussed in this chapter." @default.
- W4384519963 created "2023-07-18" @default.
- W4384519963 creator A5021179252 @default.
- W4384519963 creator A5077086042 @default.
- W4384519963 creator A5079060977 @default.
- W4384519963 date "2023-01-01" @default.
- W4384519963 modified "2023-09-25" @default.
- W4384519963 title "AI-Aided Disease Prediction in Visualized Medicine" @default.
- W4384519963 cites W135725840 @default.
- W4384519963 cites W137456267 @default.
- W4384519963 cites W1917574908 @default.
- W4384519963 cites W1969810892 @default.
- W4384519963 cites W1975962029 @default.
- W4384519963 cites W1980572960 @default.
- W4384519963 cites W1988803074 @default.
- W4384519963 cites W2001109731 @default.
- W4384519963 cites W2001771035 @default.
- W4384519963 cites W2012173597 @default.
- W4384519963 cites W2040870580 @default.
- W4384519963 cites W2073244572 @default.
- W4384519963 cites W2075620628 @default.
- W4384519963 cites W2097228681 @default.
- W4384519963 cites W2110062437 @default.
- W4384519963 cites W2113914720 @default.
- W4384519963 cites W2115567121 @default.
- W4384519963 cites W2128084896 @default.
- W4384519963 cites W2140927567 @default.
- W4384519963 cites W2151251813 @default.
- W4384519963 cites W2165839911 @default.
- W4384519963 cites W2174661749 @default.
- W4384519963 cites W2242485785 @default.
- W4384519963 cites W2291961022 @default.
- W4384519963 cites W2346062110 @default.
- W4384519963 cites W2462116812 @default.
- W4384519963 cites W2471841324 @default.
- W4384519963 cites W2518582440 @default.
- W4384519963 cites W2547045907 @default.
- W4384519963 cites W2547055581 @default.
- W4384519963 cites W2556053991 @default.
- W4384519963 cites W2557738935 @default.
- W4384519963 cites W2561588396 @default.
- W4384519963 cites W2578435868 @default.
- W4384519963 cites W2581082771 @default.
- W4384519963 cites W2588570836 @default.
- W4384519963 cites W2592007282 @default.
- W4384519963 cites W2603569150 @default.
- W4384519963 cites W2608231518 @default.
- W4384519963 cites W2610332124 @default.
- W4384519963 cites W2614981836 @default.
- W4384519963 cites W2616952103 @default.
- W4384519963 cites W2758333670 @default.
- W4384519963 cites W2761786073 @default.
- W4384519963 cites W2771079972 @default.
- W4384519963 cites W2772246530 @default.
- W4384519963 cites W2772723798 @default.
- W4384519963 cites W2774458438 @default.
- W4384519963 cites W2778621983 @default.
- W4384519963 cites W2782743885 @default.
- W4384519963 cites W2783063799 @default.
- W4384519963 cites W2785200097 @default.
- W4384519963 cites W2788633781 @default.
- W4384519963 cites W2791015340 @default.
- W4384519963 cites W2792836735 @default.
- W4384519963 cites W2795774310 @default.
- W4384519963 cites W2797883881 @default.
- W4384519963 cites W2805093171 @default.
- W4384519963 cites W2807593075 @default.
- W4384519963 cites W2811392751 @default.
- W4384519963 cites W2900683726 @default.
- W4384519963 cites W2905949064 @default.
- W4384519963 cites W2906295032 @default.
- W4384519963 cites W2911605224 @default.
- W4384519963 cites W2914568698 @default.
- W4384519963 cites W2916057939 @default.
- W4384519963 cites W2932040306 @default.
- W4384519963 cites W2946185430 @default.
- W4384519963 cites W2950862347 @default.
- W4384519963 cites W2954860820 @default.
- W4384519963 cites W2963849010 @default.
- W4384519963 cites W2972215800 @default.
- W4384519963 cites W2978950881 @default.
- W4384519963 cites W2979313212 @default.
- W4384519963 cites W2980969501 @default.
- W4384519963 cites W2982082445 @default.
- W4384519963 cites W2995276890 @default.
- W4384519963 cites W2995579012 @default.
- W4384519963 cites W3000118808 @default.
- W4384519963 cites W3000770417 @default.
- W4384519963 cites W3035332267 @default.
- W4384519963 cites W3082340268 @default.
- W4384519963 cites W3098949126 @default.
- W4384519963 cites W3105403262 @default.
- W4384519963 cites W763899905 @default.
- W4384519963 doi "https://doi.org/10.1007/978-981-32-9902-3_6" @default.
- W4384519963 hasPubMedId "https://pubmed.ncbi.nlm.nih.gov/37460729" @default.
- W4384519963 hasPublicationYear "2023" @default.
- W4384519963 type Work @default.
- W4384519963 citedByCount "0" @default.