1,206 research outputs found

    Perception and Orientation in Minimally Invasive Surgery

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    During the last two decades, we have seen a revolution in the way that we perform abdominal surgery with increased reliance on minimally invasive techniques. This paradigm shift has come at a rapid pace, with laparoscopic surgery now representing the gold standard for many surgical procedures and further minimisation of invasiveness being seen with the recent clinical introduction of novel techniques such as single-incision laparoscopic surgery and natural orifice translumenal endoscopic surgery. Despite the obvious benefits conferred on the patient in terms of morbidity, length of hospital stay and post-operative pain, this paradigm shift comes at a significantly higher demand on the surgeon, in terms of both perception and manual dexterity. The issues involved include degradation of sensory input to the operator compared to conventional open surgery owing to a loss of three-dimensional vision through the use of the two-dimensional operative interface, and decreased haptic feedback from the instruments. These changes have led to a much higher cognitive load on the surgeon and a greater risk of operator disorientation leading to potential surgical errors. This thesis represents a detailed investigation of disorientation in minimally invasive surgery. In this thesis, eye tracking methodology is identified as the method of choice for evaluating behavioural patterns during orientation. An analysis framework is proposed to profile orientation behaviour using eye tracking data validated in a laboratory model. This framework is used to characterise and quantify successful orientation strategies at critical stages of laparoscopic cholecystectomy and furthermore use these strategies to prove that focused teaching of this behaviour in novices can significantly increase performance in this task. Orientation strategies are then characterised for common clinical scenarios in natural orifice translumenal endoscopic surgery and the concept of image saliency is introduced to further investigate the importance of specific visual cues associated with effective orientation. Profiling of behavioural patterns is related to performance in orientation and implications on education and construction of smart surgical robots are drawn. Finally, a method for potentially decreasing operator disorientation is investigated in the form of endoscopic horizon stabilization in a simulated operative model for transgastric surgery. The major original contributions of this thesis include: Validation of a profiling methodology/framework to characterise orientation behaviour Identification of high performance orientation strategies in specific clinical scenarios including laparoscopic cholecystectomy and natural orifice translumenal endoscopic surgery Evaluation of the efficacy of teaching orientation strategies Evaluation of automatic endoscopic horizon stabilization in natural orifice translumenal endoscopic surgery The impact of the results presented in this thesis, as well as the potential for further high impact research is discussed in the context of both eye tracking as an evaluation tool in minimally invasive surgery as well as implementation of means to combat operator disorientation in a surgical platform. The work also provides further insight into the practical implementation of computer-assistance and technological innovation in future flexible access surgical platforms

    Lymph Node Characterization in Vivo Using Endoscopic Ultrasound Spectrum Analysis With Electronic Array Echo Endoscopes

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    Our purpose was to demonstrate the use of radiofrequency spectral analysis to distinguish between benign and malignant lymph nodes with data obtained using electronic array echo endoscopes, as we have done previously using mechanical echo endoscopes. In a prospective study, images were obtained from eight patients with benign-appearing lymph nodes and 11 with malignant lymph nodes, as verified by fine-needle aspiration. Midband fit, slope, intercept, correlation coefficient, and root-mean-square (RMS) deviation from a linear regression of the calibrated power spectra were determined and compared between the groups. Significant differences were observable for mean midband fit, intercept, and RMS deviation (t test Pβ€Š\u3cβ€Š0.05). For benign (nβ€Š=β€Š16) vs. malignant (nβ€Š=β€Š12) lymph nodes, midband fit and RMS deviation provided classification with 89β€Š% accuracy and area under receiver operating characteristic (ROC) curve of 0.95 based on linear discriminant analysis. We concluded that the mean spectral parameters of the backscattered signals from electronic array echo endoscopy can provide a noninvasive method to quantitatively discriminate between benign and malignant lymph nodes

    Surgical polarimetric endoscopy for the detection of laryngeal cancer

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    The standard-of-care for the detection of laryngeal pathologies involves distinguishing suspicious lesions from surrounding healthy tissue via contrasts in colour and texture captured by white-light endoscopy. However, the technique is insufficiently sensitive and thus leads to unsatisfactory rates of false negatives. Here we show that laryngeal lesions can be better detected in real time by taking advantage of differences in the light-polarization properties of cancer and healthy tissues. By measuring differences in polarized-light retardance and depolarization, the technique, which we named 'surgical polarimetric endoscopy' (SPE), generates about one-order-of-magnitude greater contrast than white-light endoscopy, and hence allows for the better discrimination of cancerous lesions, as we show with patients diagnosed with squamous cell carcinoma. Polarimetric imaging of excised and stained slices of laryngeal tissue indicated that changes in the retardance of polarized light can be largely attributed to architectural features of the tissue. We also assessed SPE to aid routine transoral laser surgery for the removal of a cancerous lesion, indicating that SPE can complement white-light endoscopy for the detection of laryngeal cancer

    Stereoscopic Medical Data Video Quality Issues

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    Stereoscopic medical videos are recorded, e.g., in stereo endoscopy or during video recording medical/dental operations. This paper examines quality issues in the recorded stereoscopic medical videos, as insufficient quality may induce visual fatigue to doctors. No attention has been paid to stereo quality and ensuing fatigue issues in the scientific literature so far. Two of the most commonly encountered quality issues in stereoscopic data, namely stereoscopic window violations and bent windows, were searched for in stereo endoscopic medical videos. Furthermore, an additional stereo quality issue encountered in dental operation videos, namely excessive disparity, was detected and fixed. The conducted experiments prove the existence of such quality issues in stereoscopic medical data and highlight the need for their detection and correction

    μž„μƒμˆ κΈ° ν–₯상을 μœ„ν•œ λ”₯λŸ¬λ‹ 기법 연ꡬ: λŒ€μž₯λ‚΄μ‹œκ²½ 진단 및 λ‘œλ΄‡μˆ˜μˆ  술기 평가에 적용

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    ν•™μœ„λ…Όλ¬Έ (박사) -- μ„œμšΈλŒ€ν•™κ΅ λŒ€ν•™μ› : κ³΅κ³ΌλŒ€ν•™ ν˜‘λ™κ³Όμ • μ˜μš©μƒμ²΄κ³΅ν•™μ „κ³΅, 2020. 8. 김희찬.This paper presents deep learning-based methods for improving performance of clinicians. Novel methods were applied to the following two clinical cases and the results were evaluated. In the first study, a deep learning-based polyp classification algorithm for improving clinical performance of endoscopist during colonoscopy diagnosis was developed. Colonoscopy is the main method for diagnosing adenomatous polyp, which can multiply into a colorectal cancer and hyperplastic polyps. The classification algorithm was developed using convolutional neural network (CNN), trained with colorectal polyp images taken by a narrow-band imaging colonoscopy. The proposed method is built around an automatic machine learning (AutoML) which searches for the optimal architecture of CNN for colorectal polyp image classification and trains the weights of the architecture. In addition, gradient-weighted class activation mapping technique was used to overlay the probabilistic basis of the prediction result on the polyp location to aid the endoscopists visually. To verify the improvement in diagnostic performance, the efficacy of endoscopists with varying proficiency levels were compared with or without the aid of the proposed polyp classification algorithm. The results confirmed that, on average, diagnostic accuracy was improved and diagnosis time was shortened in all proficiency groups significantly. In the second study, a surgical instruments tracking algorithm for robotic surgery video was developed, and a model for quantitatively evaluating the surgeons surgical skill based on the acquired motion information of the surgical instruments was proposed. The movement of surgical instruments is the main component of evaluation for surgical skill. Therefore, the focus of this study was develop an automatic surgical instruments tracking algorithm, and to overcome the limitations presented by previous methods. The instance segmentation framework was developed to solve the instrument occlusion issue, and a tracking framework composed of a tracker and a re-identification algorithm was developed to maintain the type of surgical instruments being tracked in the video. In addition, algorithms for detecting the tip position of instruments and arm-indicator were developed to acquire the movement of devices specialized for the robotic surgery video. The performance of the proposed method was evaluated by measuring the difference between the predicted tip position and the ground truth position of the instruments using root mean square error, area under the curve, and Pearsons correlation analysis. Furthermore, motion metrics were calculated from the movement of surgical instruments, and a machine learning-based robotic surgical skill evaluation model was developed based on these metrics. These models were used to evaluate clinicians, and results were similar in the developed evaluation models, the Objective Structured Assessment of Technical Skill (OSATS), and the Global Evaluative Assessment of Robotic Surgery (GEARS) evaluation methods. In this study, deep learning technology was applied to colorectal polyp images for a polyp classification, and to robotic surgery videos for surgical instruments tracking. The improvement in clinical performance with the aid of these methods were evaluated and verified.λ³Έ 논문은 μ˜λ£Œμ§„μ˜ μž„μƒμˆ κΈ° λŠ₯λ ₯을 ν–₯μƒμ‹œν‚€κΈ° μœ„ν•˜μ—¬ μƒˆλ‘œμš΄ λ”₯λŸ¬λ‹ 기법듀을 μ œμ•ˆν•˜κ³  λ‹€μŒ 두 가지 싀둀에 λŒ€ν•΄ μ μš©ν•˜μ—¬ κ·Έ κ²°κ³Όλ₯Ό ν‰κ°€ν•˜μ˜€λ‹€. 첫 번째 μ—°κ΅¬μ—μ„œλŠ” λŒ€μž₯λ‚΄μ‹œκ²½μœΌλ‘œ κ΄‘ν•™ 진단 μ‹œ, λ‚΄μ‹œκ²½ μ „λ¬Έμ˜μ˜ 진단 λŠ₯λ ₯을 ν–₯μƒμ‹œν‚€κΈ° μœ„ν•˜μ—¬ λ”₯λŸ¬λ‹ 기반의 μš©μ’… λΆ„λ₯˜ μ•Œκ³ λ¦¬μ¦˜μ„ κ°œλ°œν•˜κ³ , λ‚΄μ‹œκ²½ μ „λ¬Έμ˜μ˜ 진단 λŠ₯λ ₯ ν–₯상 μ—¬λΆ€λ₯Ό κ²€μ¦ν•˜κ³ μž ν•˜μ˜€λ‹€. λŒ€μž₯λ‚΄μ‹œκ²½ κ²€μ‚¬λ‘œ μ•”μ’…μœΌλ‘œ 증식할 수 μžˆλŠ” μ„ μ’…κ³Ό 과증식성 μš©μ’…μ„ μ§„λ‹¨ν•˜λŠ” 것은 μ€‘μš”ν•˜λ‹€. λ³Έ μ—°κ΅¬μ—μ„œλŠ” ν˜‘λŒ€μ—­ μ˜μƒ λ‚΄μ‹œκ²½μœΌλ‘œ μ΄¬μ˜ν•œ λŒ€μž₯ μš©μ’… μ˜μƒμœΌλ‘œ ν•©μ„±κ³± 신경망을 ν•™μŠ΅ν•˜μ—¬ λΆ„λ₯˜ μ•Œκ³ λ¦¬μ¦˜μ„ κ°œλ°œν•˜μ˜€λ‹€. μ œμ•ˆν•˜λŠ” μ•Œκ³ λ¦¬μ¦˜μ€ μžλ™ κΈ°κ³„ν•™μŠ΅ (AutoML) λ°©λ²•μœΌλ‘œ, λŒ€μž₯ μš©μ’… μ˜μƒμ— μ΅œμ ν™”λœ ν•©μ„±κ³± 신경망 ꡬ쑰λ₯Ό μ°Ύκ³  μ‹ κ²½λ§μ˜ κ°€μ€‘μΉ˜λ₯Ό ν•™μŠ΅ν•˜μ˜€λ‹€. λ˜ν•œ 기울기-κ°€μ€‘μΉ˜ 클래슀 ν™œμ„±ν™” 맡핑 기법을 μ΄μš©ν•˜μ—¬ κ°œλ°œν•œ ν•©μ„±κ³± 신경망 결과의 ν™•λ₯ μ  κ·Όκ±°λ₯Ό μš©μ’… μœ„μΉ˜μ— μ‹œκ°μ μœΌλ‘œ λ‚˜νƒ€λ‚˜λ„λ‘ ν•¨μœΌλ‘œ λ‚΄μ‹œκ²½ μ „λ¬Έμ˜μ˜ 진단을 돕도둝 ν•˜μ˜€λ‹€. λ§ˆμ§€λ§‰μœΌλ‘œ, μˆ™λ ¨λ„ κ·Έλ£Ήλ³„λ‘œ λ‚΄μ‹œκ²½ μ „λ¬Έμ˜κ°€ μš©μ’… λΆ„λ₯˜ μ•Œκ³ λ¦¬μ¦˜μ˜ κ²°κ³Όλ₯Ό μ°Έκ³ ν•˜μ˜€μ„ λ•Œ 진단 λŠ₯λ ₯이 ν–₯μƒλ˜μ—ˆλŠ”μ§€ 비ꡐ μ‹€ν—˜μ„ μ§„ν–‰ν•˜μ˜€κ³ , λͺ¨λ“  κ·Έλ£Ήμ—μ„œ μœ μ˜λ―Έν•˜κ²Œ 진단 정확도가 ν–₯μƒλ˜κ³  진단 μ‹œκ°„μ΄ λ‹¨μΆ•λ˜μ—ˆμŒμ„ ν™•μΈν•˜μ˜€λ‹€. 두 번째 μ—°κ΅¬μ—μ„œλŠ” λ‘œλ΄‡μˆ˜μˆ  λ™μ˜μƒμ—μ„œ μˆ˜μˆ λ„κ΅¬ μœ„μΉ˜ 좔적 μ•Œκ³ λ¦¬μ¦˜μ„ κ°œλ°œν•˜κ³ , νšλ“ν•œ μˆ˜μˆ λ„κ΅¬μ˜ μ›€μ§μž„ 정보λ₯Ό λ°”νƒ•μœΌλ‘œ 수술자의 μˆ™λ ¨λ„λ₯Ό μ •λŸ‰μ μœΌλ‘œ ν‰κ°€ν•˜λŠ” λͺ¨λΈμ„ μ œμ•ˆν•˜μ˜€λ‹€. μˆ˜μˆ λ„κ΅¬μ˜ μ›€μ§μž„μ€ 수술자의 λ‘œλ΄‡μˆ˜μˆ  μˆ™λ ¨λ„λ₯Ό ν‰κ°€ν•˜κΈ° μœ„ν•œ μ£Όμš”ν•œ 정보이닀. λ”°λΌμ„œ λ³Έ μ—°κ΅¬λŠ” λ”₯λŸ¬λ‹ 기반의 μžλ™ μˆ˜μˆ λ„κ΅¬ 좔적 μ•Œκ³ λ¦¬μ¦˜μ„ κ°œλ°œν•˜μ˜€μœΌλ©°, λ‹€μŒ 두가지 μ„ ν–‰μ—°κ΅¬μ˜ ν•œκ³„μ μ„ κ·Ήλ³΅ν•˜μ˜€λ‹€. μΈμŠ€ν„΄μŠ€ λΆ„ν•  (Instance Segmentation) ν”„λ ˆμž„μ›μ„ κ°œλ°œν•˜μ—¬ 폐색 (Occlusion) 문제λ₯Ό ν•΄κ²°ν•˜μ˜€κ³ , 좔적기 (Tracker)와 μž¬μ‹λ³„ν™” (Re-Identification) μ•Œκ³ λ¦¬μ¦˜μœΌλ‘œ κ΅¬μ„±λœ 좔적 ν”„λ ˆμž„μ›μ„ κ°œλ°œν•˜μ—¬ λ™μ˜μƒμ—μ„œ μΆ”μ ν•˜λŠ” μˆ˜μˆ λ„κ΅¬μ˜ μ’…λ₯˜κ°€ μœ μ§€λ˜λ„λ‘ ν•˜μ˜€λ‹€. λ˜ν•œ λ‘œλ΄‡μˆ˜μˆ  λ™μ˜μƒμ˜ νŠΉμˆ˜μ„±μ„ κ³ λ €ν•˜μ—¬ μˆ˜μˆ λ„κ΅¬μ˜ μ›€μ§μž„μ„ νšλ“ν•˜κΈ°μœ„ν•΄ μˆ˜μˆ λ„κ΅¬ 끝 μœ„μΉ˜μ™€ λ‘œλ΄‡ νŒ”-인디케이터 (Arm-Indicator) 인식 μ•Œκ³ λ¦¬μ¦˜μ„ κ°œλ°œν•˜μ˜€λ‹€. μ œμ•ˆν•˜λŠ” μ•Œκ³ λ¦¬μ¦˜μ˜ μ„±λŠ₯은 μ˜ˆμΈ‘ν•œ μˆ˜μˆ λ„κ΅¬ 끝 μœ„μΉ˜μ™€ μ •λ‹΅ μœ„μΉ˜ κ°„μ˜ 평균 제곱근 였차, 곑선 μ•„λž˜ 면적, ν”Όμ–΄μŠ¨ μƒκ΄€λΆ„μ„μœΌλ‘œ ν‰κ°€ν•˜μ˜€λ‹€. λ§ˆμ§€λ§‰μœΌλ‘œ, μˆ˜μˆ λ„κ΅¬μ˜ μ›€μ§μž„μœΌλ‘œλΆ€ν„° μ›€μ§μž„ μ§€ν‘œλ₯Ό κ³„μ‚°ν•˜κ³  이λ₯Ό λ°”νƒ•μœΌλ‘œ κΈ°κ³„ν•™μŠ΅ 기반의 λ‘œλ΄‡μˆ˜μˆ  μˆ™λ ¨λ„ 평가 λͺ¨λΈμ„ κ°œλ°œν•˜μ˜€λ‹€. κ°œλ°œν•œ 평가 λͺ¨λΈμ€ 기쑴의 Objective Structured Assessment of Technical Skill (OSATS), Global Evaluative Assessment of Robotic Surgery (GEARS) 평가 방법과 μœ μ‚¬ν•œ μ„±λŠ₯을 λ³΄μž„μ„ ν™•μΈν•˜μ˜€λ‹€. λ³Έ 논문은 μ˜λ£Œμ§„μ˜ μž„μƒμˆ κΈ° λŠ₯λ ₯을 ν–₯μƒμ‹œν‚€κΈ° μœ„ν•˜μ—¬ λŒ€μž₯ μš©μ’… μ˜μƒκ³Ό λ‘œλ΄‡μˆ˜μˆ  λ™μ˜μƒμ— λ”₯λŸ¬λ‹ κΈ°μˆ μ„ μ μš©ν•˜κ³  κ·Έ μœ νš¨μ„±μ„ ν™•μΈν•˜μ˜€μœΌλ©°, ν–₯후에 μ œμ•ˆν•˜λŠ” 방법이 μž„μƒμ—μ„œ μ‚¬μš©λ˜κ³  μžˆλŠ” 진단 및 평가 λ°©λ²•μ˜ λŒ€μ•ˆμ΄ 될 κ²ƒμœΌλ‘œ κΈ°λŒ€ν•œλ‹€.Chapter 1 General Introduction 1 1.1 Deep Learning for Medical Image Analysis 1 1.2 Deep Learning for Colonoscipic Diagnosis 2 1.3 Deep Learning for Robotic Surgical Skill Assessment 3 1.4 Thesis Objectives 5 Chapter 2 Optical Diagnosis of Colorectal Polyps using Deep Learning with Visual Explanations 7 2.1 Introduction 7 2.1.1 Background 7 2.1.2 Needs 8 2.1.3 Related Work 9 2.2 Methods 11 2.2.1 Study Design 11 2.2.2 Dataset 14 2.2.3 Preprocessing 17 2.2.4 Convolutional Neural Networks (CNN) 21 2.2.4.1 Standard CNN 21 2.2.4.2 Search for CNN Architecture 22 2.2.4.3 Searched CNN Training 23 2.2.4.4 Visual Explanation 24 2.2.5 Evaluation of CNN and Endoscopist Performances 25 2.3 Experiments and Results 27 2.3.1 CNN Performance 27 2.3.2 Results of Visual Explanation 31 2.3.3 Endoscopist with CNN Performance 33 2.4 Discussion 45 2.4.1 Research Significance 45 2.4.2 Limitations 47 2.5 Conclusion 49 Chapter 3 Surgical Skill Assessment during Robotic Surgery by Deep Learning-based Surgical Instrument Tracking 50 3.1 Introduction 50 3.1.1 Background 50 3.1.2 Needs 51 3.1.3 Related Work 52 3.2 Methods 56 3.2.1 Study Design 56 3.2.2 Dataset 59 3.2.3 Instance Segmentation Framework 63 3.2.4 Tracking Framework 66 3.2.4.1 Tracker 66 3.2.4.2 Re-identification 68 3.2.5 Surgical Instrument Tip Detection 69 3.2.6 Arm-Indicator Recognition 71 3.2.7 Surgical Skill Prediction Model 71 3.3 Experiments and Results 78 3.3.1 Performance of Instance Segmentation Framework 78 3.3.2 Performance of Tracking Framework 82 3.3.3 Evaluation of Surgical Instruments Trajectory 83 3.3.4 Evaluation of Surgical Skill Prediction Model 86 3.4 Discussion 90 3.4.1 Research Significance 90 3.4.2 Limitations 92 3.5 Conclusion 96 Chapter 4 Summary and Future Works 97 4.1 Thesis Summary 97 4.2 Limitations and Future Works 98 Bibliography 100 Abstract in Korean 116 Acknowledgement 119Docto

    Multispectral imaging of organ viability during uterine transplantation surgery in rabbits and sheep

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    Uterine transplantation surgery (UTx) has been proposed as a treatment for permanent absolute uterine factor infertility (AUFI) in the case of the congenital absence or surgical removal of the uterus. Successful surgical attachment of the organ and its associated vasculature is essential for the organ’s reperfusion and long-term viability. Spectral imaging techniques have demonstrated the potential for the measurement of hemodynamics in medical applications. These involve the measurement of reflectance spectra by acquiring images of the tissue in different wavebands. Measures of tissue constituents at each pixel can then be extracted from these spectra through modeling of the light–tissue interaction. A multispectral imaging (MSI) laparoscope was used in sheep and rabbit UTx models to study short- and long-term changes in oxygen saturation following surgery. The whole organ was imaged in the donor and recipient animals in parallel with point measurements from a pulse oximeter. Imaging results confirmed the re-establishment of adequate perfusion in the transplanted organ after surgery. Cornual oxygenation trends measured with MSI are consistent with pulse oximeter readings, showing decreased StO2 immediately after anastomosis of the blood vessels. Long-term results show recovery of StO2 to preoperative levels

    Surgical Tool Segmentation with Pose-Informed Morphological Polar Transform of Endoscopic Images

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    This paper presents a tool-pose-informed variable center morphological polar transform to enhance segmentation of endoscopic images. The representation, while not loss-less, transforms rigid tool shapes into morphologies consistently more rectangular that may be more amenable to image segmentation networks. The proposed method was evaluated using the U-Net convolutional neural network, and the input images from endoscopy were represented in one of the four different coordinate formats (1) the original rectangular image representation, (2) the morphological polar coordinate transform, (3) the proposed variable center transform about the tool-tip pixel and (4) the proposed variable center transform about the tool vanishing point pixel. Previous work relied on the observations that endoscopic images typically exhibit unused border regions with content in the shape of a circle (since the image sensor is designed to be larger than the image circle to maximize available visual information in the constrained environment) and that the region of interest (ROI) was most ideally near the endoscopic image center. That work sought an intelligent method for, given an input image, carefully selecting between methods (1) and (2) for best image segmentation prediction. In this extension, the image center reference constraint for polar transformation in method (2) is relaxed via the development of a variable center morphological transformation. Transform center selection leads to different spatial distributions of image loss, and the transform-center location can be informed by robot kinematic model and endoscopic image data. In particular, this work is examined using the tool-tip and tool vanishing point on the image plane as candidate centers. The experiments were conducted for each of the four image representations using a data set of 8360 endoscopic images from real sinus surgery. The segmentation performance was evaluated with standard metrics, and some insight about loss and tool location effects on performance are provided. Overall, the results are promising, showing that selecting a transform center based on tool shape features using the proposed method can improve segmentation performance

    Intelligent recognition of colorectal cancer combining application of computer-assisted diagnosis with deep learning approaches

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    The malignancy of the colorectal testing methods has been exposed triumph to decrease the occurrence and death rate; this cancer is the relatively sluggish rising and has an extremely peculiar to develop the premalignant lesions. Now, many patients are not going to colorectal cancer screening, and people who do, are able to diagnose existing tests and screening methods. The most important concept of this motivation for this research idea is to evaluate the recognized data from the immediately available colorectal cancer screening methods. The data provided to laboratory technologists is important in the formulation of appropriate recommendations that will reduce colorectal cancer. With all standard colon cancer tests can be recognized agitatedly, the treatment of colorectal cancer is more efficient. The intelligent computer assisted diagnosis (CAD) is the most powerful technique for recognition of colorectal cancer in recent advances. It is a lot to reduce the level of interference nature has contributed considerably to the advancement of the quality of cancer treatment. To enhance diagnostic accuracy intelligent CAD has a research always active, ongoing with the deep learning and machine learning approaches with the associated convolutional neural network (CNN) scheme

    Designing a robotic port system for laparo-endoscopic single-site surgery

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    Current research and development in the field of surgical interventions aim to reduce the invasiveness by using few incisions or natural orifices in the body to access the surgical site. Considering surgeries in the abdominal cavity, the Laparo-Endoscopic Single-site Surgery (LESS) can be performed through a single incision in the navel, reducing blood loss, post-operative trauma, and improving the cosmetic outcome. However, LESS results in less intuitive instrument control, impaired ergonomic, loss of depth and haptic perception, and restriction of instrument positioning by a single incision. Robot-assisted surgery addresses these shortcomings, by introducing highly articulated, flexible robotic instruments, ergonomic control consoles with 3D visualization, and intuitive instrument control algorithms. The flexible robotic instruments are usually introduced into the abdomen via a rigid straight port, such that the positioning of the tools and therefore the accessibility of anatomical structures is still constrained by the incision location. To address this limitation, articulated ports for LESS are proposed by recent research works. However, they focus on only a few aspects, which are relevant to the surgery, such that a design considering all requirements for LESS has not been proposed yet. This partially originates in the lack of anatomical data of specific applications. Further, no general design guidelines exist and only a few evaluation metrics are proposed. To target these challenges, this thesis focuses on the design of an articulated robotic port for LESS partial nephrectomy. A novel approach is introduced, acquiring the available abdominal workspace, integrated into the surgical workflow. Based on several generated patient datasets and developed metrics, design parameter optimization is conducted. Analyzing the surgical procedure, a comprehensive requirement list is established and applied to design a robotic system, proposing a tendon-driven continuum robot as the articulated port structure. Especially, the aspects of stiffening and sterile design are addressed. In various experimental evaluations, the reachability, the stiffness, and the overall design are evaluated. The findings identify layer jamming as the superior stiffening method. Further, the articulated port is proven to enhance the accessibility of anatomical structures and offer a patient and incision location independent design
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