Tuesday, January 28, 2020

Machine Learning In Medical Applications Health And Social Care Essay

Machine Learning In Medical Applications Health And Social Care Essay Machine Learning (ML) aims at providing computational methods for accumulating, changing and updating knowledge in intelligent systems, and in particular learning mechanisms that will help us to induce knowledge from examples or data. Machine learning methods are useful in cases where algorithmic solutions are not available, there is lack of formal models, or the knowledge about the application domain is poorly defined. The fact that various scientific communities are involved in ML research led this scientific field to incorporate ideas from different areas, such as computational learning theory, artificial neural networks, statistics, stochastic modeling, genetic algorithms and pattern recognition. Therefore, ML includes a broad class of methods that can be roughly classified in symbolic and subsymbolic (numeric) according to the nature of the manipulation which takes place whilst learning. 2.Technical discussion Machine Learning provides methods, techniques, and tools that can help solving diagnostic and prognostic problems in a variety of medical domains. ML is being used for the analysis of the importance of clinical parameters and of their combinations for prognosis, e.g. prediction of disease progression, for the extraction of medical knowledge for outcomes research, for therapy planning and support, and for overall patient management. ML is also being used for data analysis, such as detection of regularities in the data by appropriately dealing with imperfect data, interpretation of continuous data used in the Intensive Care Unit, and for intelligent alarming resulting in effective and efficient monitoring. It is argued that the successful implementation of ML methods can help the integration of computer-based systems in the healthcare environment providing opportunities to facilitate and enhance the work of medical experts and ultimately to improve the efficiency and quality of medical care. Below, we summarize some major ML application areas in medicine. Medical diagnostic reasoning is a very important application area of computer-based systems (Kralj and Kuka, 1998; Strausberg and Person, 1999; Zupan et al., 1998). In this framework, expert systems and modelbased schemes provide mechanisms for the generation of hypotheses from patient data. For example, rules are extracted from the knowledge of experts in the expert systems. Unfortunately, in many cases, experts may not know, or may not be able to formulate, what knowledge they actually use in solving their problems. Symbolic learning techniques (e.g. inductive learning by examples) are used to add learning, and knowledge management capabilities to expert systems (Bourlas et al., 1996). Given a set of clinical cases that act as examples, learning in intelligent systems can be achieved using ML methods that are able to produce a systematic description of those clinical features that uniquely characterize the cli nical conditions. This knowledge can be expressed in the form of simple rules, or often as a decision tree. A classic example of this type of system is KARDIO, which was developed to interpret ECGs (Bratko et al., 1989). This approach can be extended to handle cases where there is no previous experience in the interpretation and understanding of medical data. For example, in the work of Hau and Coiera (Hau and Coiera, 1997) an intelligent system, which takes real-time patient data obtained during cardiac bypass surgery and then creates models of normal and abnormal cardiac physiology, for detection of changes in a patients condition is described. Additionally, in a research setting, these models can serve as initial hypotheses that can drive further experimentation. 2.1 Methodology In this section we propose a new algorithm called REMED (Rule Extraction for MEdical Diagnostic). The REMED algorithm includes three main steps: 1) attributes selection, 2) selection of initial partitions, and finally 3) rule construction. 2.1.1 Attributes Selection For the first step we consider that in medical practice the collection of datasets is often expensive and time consuming. Then, it is desirable to have a classifier that is able to reliably diagnose with a small amount of data about the patients. In the first part of REMED we use simple logistic regression to quantify the risk of suffering the disease with respect to the increase or decrement of an 574attribute. We always use high confidence levels (>99%) to select attributes that are really significant and to guarantee the construction of more precise rules. Other important aspect to mention is that depending on the kind of association established (positive or negative) through the odds ratio metric, we build the syntax with which each attributes partition will appear in the rules system. This part of the algorithm is shown in the top of figure 1. 2.1.2 Partitions Selection The second part of REMED comes from the fact that if an attribute x has been statistically significant in the prediction of a disease, then its mean x (mean of the values of the attribute) is a good candidate as initial partition of the attribute. We sort the examples by the attributes value and from the initial partition of each attribute, we search the next positive example (class = 1) in the direction of the established association. Then, we calculate a new partition through the average between the value of the found example and the value of its predecessor or successor. This displacement is carried out only once for each attribute. This can be seen in the middle part of figure 1. 2.1.3 Rules Construction In the last part of the algorithm, we build a simple rule system of the following way: if (ei,1 à ¢Ã¢â‚¬ °Ã‚ ¥ p1) and (ei,j à ¢Ã¢â‚¬ °Ã‚ ¤ pj ) and à ¢Ã¢â€š ¬Ã‚ ¦ and (ei,m à ¢Ã¢â‚¬ °Ã‚ ¥ pm) then class = 1 else class = 0 where ei,j denotes the value of attribute j for example i, pj denotes the partition for attribute j and the relation à ¢Ã¢â‚¬ °Ã‚ ¥ or à ¢Ã¢â‚¬ °Ã‚ ¤ depends on the association attribute-disease. With this rule system we make a first classification. We then try to improve the accuracy of our system by increasing or decreasing the value of each partition as much as possible. For this we apply the bisection method and calculate possible new partitions starting with the current partition of each attribute and the maximum or minimum value of the examples for this attribute. We build a temporal rule system changing the current partition by each new partition and classify the examples again. We only consider a new partition if it diminishes the number of false positives (FP) but does not diminish the number of true positives (TP). This step is repeated for each attribute until we overcome the established convergence level for the bisection method or the current rule system is not able to decrease the number of FP (healthy persons diagnosed incorrectly). This part of the algorithm is exemplified at the bottom of figure 1. We can appreciate that the goal of REMED is to maximize the minority class accuracy at each step, first selecting the attributes that are strongly associated with the positive class. Then stopping the search of the partition that better discriminates both classes in the first positive example, and finally trying to improve the accuracy of the rule system but without diminishing the number of TP (sick persons diagnosed correctly). 3. Machine learning in complementary medicine 3.1 Kirlian effect a scientific tool for studying subtle energies The history of the so called Kirlian effect, also known as the Gas Discharge Visualization (GDV) technique (a wider term that includes also some other techniques is bioelectrography), goes back to 1777 when G.C. Lihtenberg in Germany recorded electrographs of sliding discharge in dust created by static electricity and electric sparks. Later various researches contributed to the development of the technique (Korotkov, 1998b): Nikola Tesla in the USA, J.J. Narkiewich-Jodko in Russia, Pratt and Schlemmer in Prague until the Russian technician Semyon D. Kirlian together with his wife Valentina noticed that through the interaction of electric currents and photograph plates, imprints of living organisms developed on film. In 1970 hundreds of enthusiasts started to reproduce Kirlian photos an the research was until 1995 limited to using a photo-paper technique. In 1995 a new approach, based on CCD Video techniques, and computer processing of data was developed by Korotkov (1998a;b) and his team in St. Petersburg, Russia. Their instrument Crown-TV can be routinely used which opens practical possibilities to study the effects of GDV. The basic idea of GDV is to create an electromagnetic field using a high voltage and high frequency generator. After a thershold voltage is exceeded the ionization of gas around the studied object takes place and as a side effect the quanta of light { photons are emitted. So the discharge can be fixed optically by a photo, photo sensor or TV-camera. Various parameters in °uence the ionization process (Korotkov, 1998b): gas properties (gas type, pressure, gas content), voltage parameters (amplitude, frequency, impulse waveform), electrode parameters (configuration, distance, dust and moisture, macro and micro defects, electromagnetic field configuration) and studied object parameters (common impedance, physical fields, skin galvanic response, etc.). So the Kirlian effect is the result of mechanical, chemical, and electromagnetic processes, and field interactions. Gas discharge acts as means of enhancing and visualization of super-weak processes. Due to the large number of parameters that in °uence the Kirlian effect it is very di ±cult or impossible to control them all, so in the development of discharge there is always an element of vagueness or stochastic. This is one of the reasons why the technique has not yet been widely accepted in practice as results did not have a high reproducibility. All explanations of the Kirlian effect apprehended  °uorescence as the emanation of a biological object. Due to the low reproducibility, in academic circles there was a widely spread opinion that all observed phenomena are nothing else but  °uctuation of the crown discharge without any connection to the studied object. With modern technology, the reproducibility became su ±cent to enable serious scientific studies. Besides studying non-living objects, such as water and various liquids (Korotkov, 1998b), minerals, the most widely studied are living organisms: plants (leafs, seeds, etc. (Korotkov and Kouznetsov, 1997; Korotkov, 1998b)), animals (Krashenuk et al., 1998), and of course humans. For humans, most widely recorded are coronas of fingers (Kraweck, 1994; Korotkov, 1998b), and GDV records of blood excerpts (Voeikov, 1998). Principal among these are studies of the psycho-physiological state and energy of a human, diagnosis (Gurvits and Korotkov, 1998), reactions to some medicines, reactions to various substances, food (Kraweck, 1994), dental treatment (Lee, 1998), alternative healing treatment, such as acupuncture, bioenergy, homeopathy, various relaxation and massage techniques (Korotkov, 1998b), GEM therapy, applied kineziology and  °ower essence treatment (Hein, 1999), leech therapy, etc., and even studying the GDV images after death (Korotkov, 1998a). There are many studies currently going on all over the world and there is no doubt that the human subtle energy field, as vizualized using the GDV technique, is highly correlated to the humans psycho-physiological state, and can be used for diagnostics, prognostics, theraphy selection, and controling the effects of the therapy. 4.Limitation M. Schurr, from the Section for Minimal Invasive Surgery of the Eberhard-Karls-University of Tuebingen, gave an invited talk on endoscopic techniques and the role of ML methods in this context. He referred to current limitations of endoscopic techniques, which are related to the restrictions of access to the human body, associated to endoscopy. In this regard, the technical limitations include: restrictions of manual capabilities to manipulate human organs through a small access, limitations in visualizing tissues and restrictions in getting diagnostic information about tissues. To alleviate these problems, international technology developments focus on the creation of new manipulation techniques involving robotics and intelligent sensor devices for more precise endoscopic interventions. It is acknowledged that this new generation of sensor devices contributes to the development and spread of intelligent systems in medicine by providing ML methods with data for further processing. Cu rrent applications include suturing in cardiac surgery, and other clinical fields. It was mentioned that particular focus is put by several research groups on the development of new endoscopic visualizing and diagnostic tools. In this context, the potentials of new imaging principles, such as fluorescence imaging or laser scanning microscopy, and machine learning methods are very high. The clinical idea behind these developments is early detection of malignant lesions in stages were local endoscopic therapy is possible. Technical developments in this field are very promising, however, clinical results are still pending and ongoing research will have to clarify the real potential of these technologies for clinical use. Moustakis and Charissis work (Moustakis and Charissis, 1999) surveyed the role of ML in medical decision making and provided an extensive literature review on various ML applications in medicine that could be useful to practitioners interested in applying ML methods to improve the efficiency and quality of medical decision making systems. In this work the point of getting away from the accuracy measures as sole evaluation criteria of learning algorithms was stressed. The issue of comprehensibility, i.e. how well the medical expert can understand and thus use the results from a system that applies ML methods, is very important and should be carefully considered in the evaluation. 5.Improvement Conclusion The workshop gave the opportunity to researchers working in the ML field to get an overview of current work of ML in medical applications and/or gain understanding and experience in this area. Furthermore, young researchers had the opportunity to present their ideas, and received feedback from other workers in the area. The participants acknowledged that the diffusion of ML methods in medical applications can be very effective in improving the efficiency and the quality of medical care, but it still presents problems that are related to both theory and applications. From a theoretic point of view, it is important to enhance our understanding of ML algorithms as well as to provide mathematical justifications for their properties, in order to answer fundamental questions and acquire useful insight in the performance and behavior of ML methods. On the other hand, some major issues which concern the process of learning knowledge in practice are the visualization of the learned knowledge, the need for algorithms that will extract understandable rules from neural networks, as well as algorithms for identifying noise and outliers in the data. The participants also mentioned some other problems that arise in ML applications and should be addressed, like the control of over fitting and the scaling properties of the ML methods so that they can apply to problems with large datasets, and high-dimensional input (feature) and output (classes-categories) spaces. A recurring theme in the recommendations made by the participants was the need for comprehensibility of the learning outcome, relevance of rules, criteria for selecting the ML applications in the medical context, the integration with the patient records and the description of the appropriate level and role of intelligent systems in healthcare. These issues are very complex, as technical, organizational and social issues become intertwined. Previous research and experience suggests that the successful implementation of information systems (e.g., (Anderson, 1997; Pouloudi, 1999)), and decision support systems in particular (e.g., (Lane et al., 1996; Ridderikhoff and van Herk, 1999)), in the area of healthcare relies on the successful integration of the technology with the organizational and social context within which it is applied. Medical information is vital for the diagnosis and treatment of patients and therefore the ethical issues presented during its life cycle are critical. Understanding these issues becomes imperative as such technologies become pervasive. Some of these issues are system-centered, i.e., related to the inherent problems of the ML research. However, it is humans, not systems, who can act as moral agents. This means that it is humans that can identify and deal with ethical issues. Therefore, it is important to study the emerging challenges and ethical issues from a human-centered perspective by considering the motivations and ethical dilemmas of researchers, developers and medical users of ML methods in medical applications.

Monday, January 20, 2020

Adam Smiths Lectures on Jurisprudence Essay -- Economics Lectures Jur

Adam Smith's Lectures on Jurisprudence Adam Smith, in his Lectures of Jurisprudence, makes an argument for the necessity of marriage through biological mechanisms. While superficially similar, his arguments seem to differ greatly from the modern notion of how labor is distributed within the household. Instead of examining the comparative advantages in production between the husband and the wife, Smith seems to focus on the importance of lineage and, more specifically, inheritance. The foundation of Smith’s argument for the necessity of marriage is rooted in children. He begins with examples contrary to the human experience. He finds that in mammals, since â€Å"the support of the young is no burthen to the female† any further relation is seen as unnecessary (Smith 438). Birds, however, â€Å"some such thing as marriage seems to take place† (438). He quickly counters with: â€Å"but whenever the young can shift for themselves all further inclination ceases† (438). The essential piece of this argument here is the demands made on the parent by the child. According to his argument, th...

Saturday, January 11, 2020

Australian Consumer Law Tutorial Answers

A representative for Scoutmaster told Mrs. Trans that: ; â€Å"We believe the new rent is very reasonable and below the market value†; and The rent is lower than the rental paid by other tenants in the Food Court† Both statements were incorrect. Scoutmaster gave Mrs. Trans 7 days to agree to the lease renewal, but provided no reason for giving this limited time frame. Advise Mrs. Trans as to whether Scoutmaster Pity Ltd has breached the Competition and Consumer Act 2010 (previously referred to as Trade Practices Act 1974 (Act)) and if so, her available remedies.Issue: Were the statements misleading or deceptive in breach of the Australian Consumer Law? Law: ; Section 18, Schedule 2 to the Competition and Consumer Act 2010 (Act) (or alternatively you can say Section 18 Australian Consumer Law which is the title for Schedule 2) ; Section 4 (â€Å"presumption of misleading†) ; Eveready Australia Pity Ltd v Gillette Australia Pity Ltd OR Taco Company of Status Inc v T aco Bell Pity Ltd (â€Å"objective test†) Application: ; Explain which of the statements was an opinion and why the law presumes it was misleading (e was there any basis for making the opinion? ; Apply the objective test to the second statement made by the Scoutmaster representative. In particular: (what will be the target market and why would a reasonable person from that target market be misled or deceived? Issue: Did Scoutmaster engage in unconscionable conduct? ; Section 22 Australian Consumer Law ; Miller v Gunter & Ours OR Commercial Bank of Australia v Amid ; Explain why section 21 and not section 20 applies ; Explain why Scoutmasters' conduct was in trade or commerce ; Explain what the conduct was and why it was unconscionable, with reference to the factors listed in section 22 of the Australian Consumer Law.In particular: o The superior bargaining position of Scoutmaster o Ability to understand documents o Undue pressure and tactics used Issue: Did Scoutmaster make a false or misleading representation? Section Australian Consumer Law ; Explain why the statements were false regarding the price of a service, in particular noting what the relevant price is and what the service is in the question. Issue: What are the remedies? Law: Section 236 (damages); Section 232 (injunction); Section 243 (other orders) ; Explain the remedies that Mrs. Trans would be seeking as you are advising her and not the AC.In particular: o Explain what an injunction would do and why Mrs. Trans would want this remedy; o Explain when Mrs. Trans would be entitled to damages and how damages would be calculated o Explain when Mrs. Trans loud want to vary the contract and what the variation would be o Explain when Mrs. Trans would want to void the contract and what the effect of voiding the contract would be Conclusion: ; Scoutmaster has engaged in misleading and deceptive conduct, unconscionable conduct and made a false or misleading representation in respect of the price of a service.

Friday, January 3, 2020

Kill A Mockingbird By Harper Lee - 1686 Words

â€Å"Simply because we’re licked a hundred years before we started is no reason for us not to try to win† (Lee 101). One of the major lessons of Harper Lee’s novel To Kill a Mockingbird is to always do the right thing. The text is told through the narrator Jean Louise â€Å"Scout† Finch. She lives in the small, old town of Maycomb, Alabama with her brother, Jem Finch and her father, Atticus. Across the street from the Finch lives Arthur â€Å"Boo† Radley who is believed to be a horrible human. Rumor has it he eats squirrels and cats and is locked in the basement of his house for these actions when he was a teen. Throughout the novel, there is also a trial that has inundates the whole town. It is between Tom Robinson and the daughter of Bob Ewell. Mr. Ewell is a disgrace to the town. In the book To Kill a Mockingbird, Harper Lee uses characterization to show that people should always do the right thing even when faced with big obstacles. First, Lee shows courage through the character of Mrs. Dubose. Mrs. Dubose is an elderly, angry lady who lives near the Finch family. She also happens to have an addiction to morphine, which the children do not know at the time. Jem’s punishment is to read to her everyday for a month for going and destroying her prized, impeccable camellia bushes after he got fed up with her taunts about Atticus. After a month of Jem and Scout reading to Mrs. Dubose, she passes away. Atticus explains to his children that their reading was intended to help stave herShow MoreRelatedKill A Mockingbird By Harper Lee1049 Words   |  5 PagesTo Kill a Mockingbird: How a Story could be based on True Events in Everyday LifeDaisy GaskinsCoastal Pines Technical Collegeâ€Æ'Harper Lee was born in Monroeville, Alabama. Her father was a former newspaper editor and proprietor, who had served as a state senator and practiced as a lawyer in Monroeville. Also Finch was known as the maiden name of Lee†™s mother. With that being said Harper Lee became a writer like her father, but she became a American writer, famous for her race relations novel â€Å"ToRead MoreTo Kill a Mockingbird by Harper Lee1000 Words   |  4 Pagesworld-wide recognition to the many faces of prejudice is an accomplishment of its own. Author Harper Lee has had the honor to accomplish just that through her novel, To Kill a Mockingbird, a moving and inspirational story about a young girl learning the difference between the good and the bad of the world. In the small town of Monroeville, Alabama, Nelle Harper Lee was born on April 28, 1926. Growing up, Harper Lee had three siblings: two sisters and an older brother. She and her siblings grew up modestlyRead MoreKill A Mockingbird By Harper Lee1290 Words   |  6 PagesHarper Lee published To Kill a Mockingbird during a rough period in American history, also known as the Civil Rights Movement. This plot dives into the social issues faced by African-America ns in the south, like Tom Robinson. Lee felt that the unfair treatment towards blacks were persistent, not coming to an end any time in the foreseeable future. This dark movement drove her to publish this novel hopeful that it would encourage the society to realize that the harsh racism must stop. Lee effectivelyRead MoreKill A Mockingbird By Harper Lee873 Words   |  4 PagesIn the book, To Kill a Mockingbird, Harper Lee illustrates that â€Å"it’s a sin to kill a mockingbird† throughout the novel by writing innocent characters that have been harmed by evil. Tom Robinson’s persecution is a symbol for the death of a mockingbird. The hunters shooting the bird would in this case be the Maycomb County folk. Lee sets the time in the story in the early 1950s, when the Great Depression was going on and there was poverty everywhere. The mindset of people back then was that blackRead MoreKill A Mockingbird By Harper Lee963 Words   |  4 Pagesgrowing up, when older characters give advice to children or siblings.Growing up is used frequently in the novel To Kill a Mockingbird by Harper Lee. Harper Lee uses the theme growing up in To Kill a Mockingbird to change characters opinion, develop characters through their world, and utilizes prejudice to reveal growing up. One major cause growing up is used in To Kill a Mockingbird is to represent a change of opinion. One part growing up was shown in is through the trial in part two of the novelRead MoreKill A Mockingbird By Harper Lee1052 Words   |  5 PagesTo Kill a Mockingbird by Harper Lee takes place in Maycomb County, Alabama in the late 30s early 40s , after the great depression when poverty and unemployment were widespread throughout the United States. Why is the preconception of racism, discrimination, and antagonism so highly related to some of the characters in this book? People often have a preconceived idea or are biased about one’s decision to live, dress, or talk. Throughout To Kill a Mockingbird, Harper Lee examines the preconceptionRead MoreHarper Lee and to Kill a Mockingbird931 Words   |  4 PagesHarper Lee and her Works Harper Lee knew first hand about the life in the south in the 1930s. She was born in Monroeville, Alabama in 1926 (Castleman 2). Harper Lee was described by one of her friends as Queen of the Tomboys (Castleman 3). Scout Finch, the main character of Lees Novel, To Kill a Mockinbird, was also a tomboy. Many aspects of To Kill a Mockingbird are autobiographical (Castleman 3). Harper Lees parents were Amasa Coleman Lee and Frances Finch Lee. She was the youngestRead MoreKill A Mockingbird By Harper Lee1695 Words   |  7 PagesIn To Kill a Mockingbird Harper Lee presents as a ‘tired old town’ where the inhabitants have ‘nowhere to go’ it is set in the 1930s when prejudices and racism were at a peak. Lee uses Maycomb town to highlight prejudices, racism, poverty and social inequality. In chapter 2 Lee presents the town of Maycomb to be poverty stricken, emphasised through the characterisation of Walter Cunningham. When it is discovered he has no lunch on the first day of school, Scout tries to explain the situation to MissRead MoreKill A Mockingbird By Harper Lee1876 Words   |  8 PagesThough Harper Lee only published two novels, her accomplishments are abundant. Throughout her career Lee claimed: the Presidential Medal of Freedom, Pulitzer Prize for Fiction, Goodreads Choice Awards Best Fiction, and Quill Award for Audio Book. Lee was also inducted into the American Academy of Arts and Letters. This honor society is a huge accomplishment and is considered the highest recognition for artistic talent and accomplishment in the United States. Along with these accomplishments, herRead MoreKill A Mockingbird, By Harper Lee1197 Words   |  5 Pagessuch as crops, houses, and land, and money was awfully limited. These conflicts construct Harper Lee’s novel, To Kill a Mocking Bird. In To Kill a Mocking Bird, Lee establishes the concurrence of good and evil, meaning whether people are naturally good or naturally evil. Lee uses symbolism, characterization, and plot to portray the instinctive of good and evil. To Kill a Mocking Bird, a novel by Harper Lee takes place during the 1930s in the Southern United States. The protagonist, Scout Finch,