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- W3189411510 abstract "Explainable Artificial Intelligence (XAI) is an emerging research topic of machine learning aimed at unboxing how AI systems’ black-box choices are made. This research field inspects the measures and models involved in decision-making and seeks solutions to explain them explicitly. Many of the machine learning algorithms cannot manifest how and why a decision has been cast. This is particularly true of the most popular deep neural network approaches currently in use. Consequently, our confidence in AI systems can be hindered by the lack of explainability in these black-box models. The XAI becomes more and more crucial for deep learning powered applications, especially for medical and healthcare studies, although in general these deep neural networks can return an arresting dividend in performance. The insufficient explainability and transparency in most existing AI systems can be one of the major reasons that successful implementation and integration of AI tools into routine clinical practice are uncommon. In this study, we first surveyed the current progress of XAI and in particular its advances in healthcare applications. We then introduced our solutions for XAI leveraging multi-modal and multi-centre data fusion, and subsequently validated in two showcases following real clinical scenarios. Comprehensive quantitative and qualitative analyses can prove the efficacy of our proposed XAI solutions, from which we can envisage successful applications in a broader range of clinical questions." @default.
- W3189411510 created "2021-08-16" @default.
- W3189411510 creator A5003541205 @default.
- W3189411510 creator A5005965903 @default.
- W3189411510 creator A5073429636 @default.
- W3189411510 date "2022-01-01" @default.
- W3189411510 modified "2023-10-16" @default.
- W3189411510 title "Unbox the black-box for the medical explainable AI via multi-modal and multi-centre data fusion: A mini-review, two showcases and beyond" @default.
- W3189411510 cites W128448889 @default.
- W3189411510 cites W1516725721 @default.
- W3189411510 cites W17682891 @default.
- W3189411510 cites W1787224781 @default.
- W3189411510 cites W1885185971 @default.
- W3189411510 cites W1963918827 @default.
- W3189411510 cites W1971396017 @default.
- W3189411510 cites W1977295820 @default.
- W3189411510 cites W1980607498 @default.
- W3189411510 cites W1993490134 @default.
- W3189411510 cites W1994746396 @default.
- W3189411510 cites W1996796871 @default.
- W3189411510 cites W2009707259 @default.
- W3189411510 cites W2010933228 @default.
- W3189411510 cites W2018041381 @default.
- W3189411510 cites W2019062120 @default.
- W3189411510 cites W2019818855 @default.
- W3189411510 cites W2027384547 @default.
- W3189411510 cites W2039509869 @default.
- W3189411510 cites W2046727047 @default.
- W3189411510 cites W2056616115 @default.
- W3189411510 cites W2056634932 @default.
- W3189411510 cites W2081508199 @default.
- W3189411510 cites W2082704080 @default.
- W3189411510 cites W2089468765 @default.
- W3189411510 cites W2096150188 @default.
- W3189411510 cites W2099741732 @default.
- W3189411510 cites W2110976525 @default.
- W3189411510 cites W2113164419 @default.
- W3189411510 cites W2118022153 @default.
- W3189411510 cites W2126629875 @default.
- W3189411510 cites W2141222241 @default.
- W3189411510 cites W2177870565 @default.
- W3189411510 cites W2180456856 @default.
- W3189411510 cites W2194775991 @default.
- W3189411510 cites W2234451305 @default.
- W3189411510 cites W2276530525 @default.
- W3189411510 cites W2282821441 @default.
- W3189411510 cites W2293904505 @default.
- W3189411510 cites W2295107390 @default.
- W3189411510 cites W2317648909 @default.
- W3189411510 cites W2329659234 @default.
- W3189411510 cites W2337125453 @default.
- W3189411510 cites W2339530503 @default.
- W3189411510 cites W2401520370 @default.
- W3189411510 cites W2475924856 @default.
- W3189411510 cites W2490973085 @default.
- W3189411510 cites W2525984666 @default.
- W3189411510 cites W2533800772 @default.
- W3189411510 cites W2558050786 @default.
- W3189411510 cites W2558685994 @default.
- W3189411510 cites W2587490412 @default.
- W3189411510 cites W2592929672 @default.
- W3189411510 cites W2621053657 @default.
- W3189411510 cites W2641905542 @default.
- W3189411510 cites W2657631929 @default.
- W3189411510 cites W2664267452 @default.
- W3189411510 cites W2761379268 @default.
- W3189411510 cites W2762741128 @default.
- W3189411510 cites W2769506033 @default.
- W3189411510 cites W2777186991 @default.
- W3189411510 cites W2791366411 @default.
- W3189411510 cites W2793546384 @default.
- W3189411510 cites W2796547658 @default.
- W3189411510 cites W2804604520 @default.
- W3189411510 cites W2809442901 @default.
- W3189411510 cites W2883424428 @default.
- W3189411510 cites W2884367402 @default.
- W3189411510 cites W2884436604 @default.
- W3189411510 cites W2891503716 @default.
- W3189411510 cites W2895083984 @default.
- W3189411510 cites W2895763047 @default.
- W3189411510 cites W2897007327 @default.
- W3189411510 cites W2901218091 @default.
- W3189411510 cites W2904479692 @default.
- W3189411510 cites W2904682781 @default.
- W3189411510 cites W2904997892 @default.
- W3189411510 cites W2905307056 @default.
- W3189411510 cites W2905810301 @default.
- W3189411510 cites W2908201961 @default.
- W3189411510 cites W2910707576 @default.
- W3189411510 cites W2912581782 @default.
- W3189411510 cites W2913977338 @default.
- W3189411510 cites W2914550345 @default.
- W3189411510 cites W2914959816 @default.
- W3189411510 cites W2915292867 @default.
- W3189411510 cites W2918556752 @default.
- W3189411510 cites W2927351257 @default.
- W3189411510 cites W2929028679 @default.
- W3189411510 cites W2931364255 @default.