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      Prediction of oral implant prognosis through machine learning methods

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      https://www.riss.kr/link?id=T13743535

      • 저자
      • 발행사항

        서울 : 서울대학교 치의학대학원, 2015

      • 학위논문사항

        학위논문 (석사) -- 서울대학교 치의학대학원 , 치의학과 , 2015. 2

      • 발행연도

        2015

      • 작성언어

        한국어

      • 주제어
      • DDC

        617.6 판사항(22)

      • 발행국(도시)

        서울

      • 기타서명

        Machine learning method를 이용한 임플란트 예후 예측 요소

      • 형태사항

        28장 : 삽화 ; 26 cm

      • 일반주기명

        참고문헌 수록

      • DOI식별코드
      • 소장기관
        • 서울대학교 중앙도서관 소장기관정보
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      다국어 초록 (Multilingual Abstract) kakao i 다국어 번역

      Purpose: Despite the high success rate of oral implants, usually described as osseointegration, the practitioner occasionally encounters difficulties caused by trade-offs between various factors during surgery. The purpose of this study was to discover the most significant factors predicting implant success using non-traditional statistical analysis.
      Materials and Methods: The study was based on a systematic search of chart files at Seoul National University Bundang Hospital from June 2004 to October 2005. Oral and maxillofacial surgeons inserted 667 implants in the mouths of 198 patients after consultation with a prosthodontist. The implants were judged as favorably or unfavorably placed and the associated outcome was assessed 1 year after treatment by a prosthodontist from a biomechanical point of view. We processed descriptive evaluations for several features in binary form for the analysis. Unfortunately, some cases were excluded due to lack of information during this process. In this study, we used the machine learning method of a decision tree model and a support vector machine for analysis.
      Results: We identified mesio-distal position of the fixture as the most significant factor determining the prognosis of the implant. Both of the machine learning methods yielded this result.
      Discussion: The strength of the machine learning method is that it can be applied to a small sample size. To verify the conclusion of this study, traditional statistical tools could be applied with large samples
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      Purpose: Despite the high success rate of oral implants, usually described as osseointegration, the practitioner occasionally encounters difficulties caused by trade-offs between various factors during surgery. The purpose of this study was to discove...

      Purpose: Despite the high success rate of oral implants, usually described as osseointegration, the practitioner occasionally encounters difficulties caused by trade-offs between various factors during surgery. The purpose of this study was to discover the most significant factors predicting implant success using non-traditional statistical analysis.
      Materials and Methods: The study was based on a systematic search of chart files at Seoul National University Bundang Hospital from June 2004 to October 2005. Oral and maxillofacial surgeons inserted 667 implants in the mouths of 198 patients after consultation with a prosthodontist. The implants were judged as favorably or unfavorably placed and the associated outcome was assessed 1 year after treatment by a prosthodontist from a biomechanical point of view. We processed descriptive evaluations for several features in binary form for the analysis. Unfortunately, some cases were excluded due to lack of information during this process. In this study, we used the machine learning method of a decision tree model and a support vector machine for analysis.
      Results: We identified mesio-distal position of the fixture as the most significant factor determining the prognosis of the implant. Both of the machine learning methods yielded this result.
      Discussion: The strength of the machine learning method is that it can be applied to a small sample size. To verify the conclusion of this study, traditional statistical tools could be applied with large samples

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      목차 (Table of Contents)

      • 1. Introduction ----------------------------------------------------------------------- 1.
      • 2. Materials and methods ---------------------------------------------------------- 5.
      • 3. Results ----------------------------------------------------------------------------- 13.
      • 1. Introduction ----------------------------------------------------------------------- 1.
      • 2. Materials and methods ---------------------------------------------------------- 5.
      • 3. Results ----------------------------------------------------------------------------- 13.
      • 4. Discussion ------------------------------------------------------------------------- 20.
      • 5. References -------------------------------------------------------------------------23.
      • Figures and Tables
      • Figure 1. ------------------------------------------------------------------------------ 14.
      • Figure 2. ------------------------------------------------------------------------------ 15.
      • Table 1. ------------------------------------------------------------------------------- 10.
      • Table 2. ------------------------------------------------------------------------------- 12.
      • Table 3. ------------------------------------------------------------------------------- 17.
      • Table 4. ------------------------------------------------------------------------------- 18.
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